Java Base64与图片互转操作测试

在Java1.8中我们已经可以直接使用sun.misc.BASE64Decoder和sun.misc.BASE64Encoder的Base64工具类了,再也不用满世界地去找jar包了,这也是Oracle(Sun)公司Java开发团队给我们提供的便利。

编写一个工具类

package com.boonya.base64;

import sun.misc.BASE64Decoder;
import sun.misc.BASE64Encoder;
import java.io.*;
/**
 * @ClassName: Base64ImageUtils
 * @Description: TODO(Base64与图片互转)
 * @author: pengjunlin
 * @company: ******科技有限公司
 * @date 2018-07-25
 */
public class Base64ImageUtils {

    /**
     * 将base64编码字符串转换为图片
     * @param base64Code
     * @param outputPath
     * @return
     */
    public static boolean generateImage(String base64Code, String outputPath) {
        if (base64Code == null)
            return false;
            BASE64Decoder decoder = new BASE64Decoder();
        try {
                // 解密
                byte[] b = decoder.decodeBuffer(base64Code);
                // 处理数据
                for (int i = 0; i < b.length; ++i) {
                    if (b[i] < 0) {
                         b[i] += 256;
                    }
                 }
                OutputStream out = new FileOutputStream(outputPath);
                out.write(b);
                out.flush();
                out.close();
                return true;
        } catch (Exception e) {
             return false;
        }
    }

    /**
     * 根据图片地址转换为base64编码字符串
     * @param imagePath
     * @return
     */
    public static String getBase64Code(String imagePath) {
        InputStream inputStream = null;
        byte[] data = null;
        try {
            inputStream = new FileInputStream(imagePath);
            data = new byte[inputStream.available()];
            inputStream.read(data);
            inputStream.close();
        } catch (IOException e) {
            e.printStackTrace();
        }
        // 加密
        BASE64Encoder encoder = new BASE64Encoder();
        return encoder.encode(data);
    }

}

编写一个测试类

package com.boonya.base64;

/**
 * @ClassName: Base64Test
 * @Description: TODO(功能描述)
 * @author: pengjunlin
 * @company: ******科技有限公司
 * @date 2018-07-25
 */
public class Base64Test {

    /**
     * 主函数入口
     * @param args
     */
    public static void main(String[] args) {
        String base64Code = Base64ImageUtils.getBase64Code("C:\\Users\\Administrator\\Desktop\\ocr01.jpeg");
        System.out.println(base64Code);
        Base64ImageUtils.generateImage(base64Code, "C:\\Users\\Administrator\\Desktop\\ocr00.jpeg");
    }
}

测试结果展示

Base64Code(你拿到下面这一串支付可以在任何系统中还原为一副美女图片):

/9j/4AAQSkZJRgABAQEASABIAAD/2wBDAAYEBQYFBAYGBQYHBwYIChAKCgkJChQODwwQFxQYGBcU
FhYaHSUfGhsjHBYWICwgIyYnKSopGR8tMC0oMCUoKSj/2wBDAQcHBwoIChMKChMoGhYaKCgoKCgo
KCgoKCgoKCgoKCgoKCgoKCgoKCgoKCgoKCgoKCgoKCgoKCgoKCgoKCgoKCj/wAARCAELAf4DASIA
AhEBAxEB/8QAHAAAAQQDAQAAAAAAAAAAAAAAAAEFBgcCAwQI/8QATBAAAQMDAQUGAwUEBwQIBwAA
AQACAwQFESEGEjFBUQcTImFxgRQykSNCobHBFVJi0QgWM3KC4fAkQ1OSFzRjc6K0wvElNThWk5TS
/8QAGgEAAgMBAQAAAAAAAAAAAAAAAAQBAwUCBv/EADURAAICAQMCAwYFBAEFAAAAAAABAgMRBBIh
MUEFE1EiMmFxgaEUQpGx8CPB0eEVM0NScvH/2gAMAwEAAhEDEQA/ALpShIhZ4yLlCEh0UAI9wY0u
PABRuomM8z3ngTp6JzvNRusETTq7j6Jn4LN1luXsQxTHjIqEh4ISJeHNLlIgKQFQk5pUALnPE5SI
QgAQhCABCTKVAHZa6juZ91x8D9Cn9RTOmikFuqO/pxk+JuhWjo7crYxe6P5jqSoQnigAlSBKgAQU
JEACVGEhOBk6BAASkJHsuaoqmRgnpqmeruUZyXPOByBOFxKxR6ncYOQ6Vdxipwc+I+qa59od3/c6
HQZOE0S3alLiGyxl3lIAfxWmVxnj+ylePZrkvK2TfAxGlLqdklygnfqDG4nXBBSPfKXE00sUgHzM
Phcmx7HvYWymOQDnu4/ALikdFHIN1743NGnNo/X9FWlllu1HZcrtURkxxs7pwOpfxA9FxftKtbh7
ZI3kn5S3l7DRNlw2gopM0d5zE4t+zqGHQnrlQW4XeqoassjlbV0pcQXM+YepTVWldnGCfZiuS3qS
9tkcGzN3XdW6hO8UrZ2hzHA+irex1TK6nBgmD5AMbkhw70TtRXCSjnGro5g75QPw6H80vZp03joT
KHdE9p6KaY6M3W9SnakoIoAHHxydSuGw3uO4xta/DZ8ZwDo4dQnkFW1aeEOVyxKycujFRlCEwVAh
CEAIUIKEACVCEACEIQAIQkzqgBE33ep7qIRtPifx8gu57gxjnO0DRkqN1MxqJ3SHmdPRLaq3ZHC6
ssqjuZghJwRlZI2KhJlKFAAhCRSAIQkyoAEhOiUpCul1AlYSpEoW8IAsZHBkbnOOgWS4Lu6QwiOJ
jiDxIXNktsW0TFZeBoqZTPM555nT0WoJS1zR4mkeyQELDllvLHVjHAqEIXJIIQhAAEqQJVIAhCEA
CEIJQAJEqRQAq6bfUdxUt/ddoQubKQAk6AruEnGSkiGsrBK85SritczpIN2QODmaajiF2rbjLcsi
TWHgEISrogEhSpEAC4qufxuaDhrBqepXW9wawk8gmOqcSCHHA4k9T/NV2T2oshHLGTaG8NpIS5xG
T8rBqXHkMKGXC8Ndn4iVpd98Rne3PfIH4LdfR8beqkvkxT0rS1xaeDuePyUWulDUXGogt1vH+0PO
8I8eED/XFRTVGTzI0ElCPBjeKqV3hj7qWEkbr42+Np6HqsLLU3uCoaaOGQtJ+5kB4/LKsHZrYGjo
IGfEDv5yBvF3yj0HRTegt8FHEGxxsGOjVdK6EVsSycueeSvf2rXQAGsopeGpEeSPUfyK4a+u+Kpn
ugdJTVTfldruk9CrYkhjePGxpHom+e1U0n+6YMeSWTSeUiVJd0UtU2WW8RtdVMeyRur90ZBHp+91
x5FOlPZLdBTMiFLFvlpwZZN5+euOqs59thaCWsaNMYwmO77PUlYC58eHgYz6K3z5S4zhEpx9Ctrn
Zn0bhOWSRtPCSMnwnzHBddrubpTHQ3NzHsfhsMx/e5Nd69eRTxcKSro4i+mqe8a3R8BcSR5szqR1
ByPMKL1dtZXiURuZE/OSAcNHmDy9Dp0KvjJTWJv6g36Entl0lt9xEEzjG5jgWuOhB8/Pj6q19nrs
250eXbombo4A6HzCoGGoqqvuqC5Du7pTjMMucCoYOWf3vz9lLdj7xLC4TMBbJEQ2WLqM4P8AP2XE
4bOSmyCsjldS6AhaKOojqaeOaJwdG9uQQt6gRBCEIAQpUhQEAKhCEACEIQAJEFGqAGq81OAIGHU6
uTR0TnPbal8r5N9ji45XO63VTfuA+hWXfC2c28DUHFLCZy8kBbXU07fmicPZa3Nc35mkeoSzhJdU
WJpiJUiULgkEhRlCABCEhQAZSHRLySEHqul1AliEiFvCApQhAQAhY0/MAfULS+kgfxib9FvKAocU
+oZaOJ9spncGub6FaHWdn3JHD1TplCrdFb6o6Vkl3GR9plb8j2n8Fpfb6hnGPPoVIdEEqt6Ot9Fg
7V0iMOikZ88bx7LAnB5qV6LB0MbvmY0+ypeiXZnSv9URbeWbWPd8rHH0CkrIImfLG0ey2AADQAKF
ofWRLv8AREdZRTvxiJ3vot7LXMfmLWp7Qro6OtdTh3SGplob9+Q+wW9lrphjO871K7kKxUVrojl2
Sfc52UVMwaRN91ubGxvytaPZZpFYopdEc5YBKhC6IBKkQEAKgpEIA5614bFgnQ8fRR65VRjpp5SM
OYwvGeuNE7Xd2Igc8CoxtVLu2utLXYDY2h3kHHX8AlruWkM0LJAK6RlNTOa7IDoxK4ka6jI+pIUt
7P7OwwG5yAd5UNAaejf81ENrIjPWU1FFnen7qFoB4aBW/aqZlHRQwRNAjjYGNHQAYCsbxWn6jlj4
wdccQaAGjC27oAStOEuVUUdDURkLU/QLodwWpwKnAZOZ7cjiuCqb4DjiOa75jphccp+zJxnRTgnJ
BdqHTQgTwObvsBduuG8x3rzGeGQo5/s9wjZUNZLBODgiNwa7e8s6O/VSLbFrTTuLm5JyBg/6wfzV
fuqDGXw1ABiJxqNPTyP4pmmG6OV1Lc8D62Hep3wSls8bSSQ0Fj4zycAdWkeWR6JYJXUNWJwe8J4k
aCZo/wDVj6opG1b6WIRvfM4HwulBwR0z8zT0PArbVwvmYAAI6jORjBDy3iMjTeH16jCHw8MOCx9i
LmI6g0DnfYvAfCTw15BTbKpfZutLnOY8d1U0hD9Pvt5kDl1+qt631AqaVkg1JGq4jlPDEr4YeUda
RASLooFCEiUIJAJUiVBAIQhAAkKVIgBChCFICpC0HiAfZCFAGs08Lh4o2H2Wp1vpncYgPRdI4Iyu
XCL6olSa7nC+1UzuG+PQrS+0Rn5ZXD1CdEFcOit/lOlZNdxndaHD5JWn1CxbaJCfFIwDyGU9IXH4
Wr0J82fqNbbPF9+Rx9NFubbKUDVrj6ldyMKxUVrojl2SfcRCEKw5BCEoQAIQgKQBCEIAEIQgBQlS
BKoAEIQgAQhCCAQhCCQQhCABCEIAEIQgASE8UFYSnDT6IJGe/S7tETnXeVd7T3Jz21sbnHcL4dM8
gCVKNrbi2Nr2ZGB+qgd2b3tRVNwXFz2MGPTX8MpbKlZk0dNXiOWd1ro31+2FqkczAiiFQ7y8GB+J
CtSADAB5Kq6JlVV3CsbFVGjjjjYySRnzHjho6DRdDG3K3Tsko7k+oi5se5xz+a7xuST7Fko5Zabc
DhqgkY1TLYrka2nDn4Eo0cAVuuUjjTvDXljuo5KtFGHnDN1bdaCiaXVNVFGOhcuD+stoeQG1rNeG
QQoXJR00J+Ir53P3eBcd0LOHaTZyiHjjYN84L3wnB9yFbGGenJ24JE5+IhqGb0EjH444OcLjkm+Y
csapiiqLVcHb1pqjTVDecLtPccCF3QOk38TY7wHUt4HzChprqRtI/tg3etVRjSWMh3t/mqyme2pJ
jkDmVDflezQke/zDyPsrU2tw+mecZjeDG44VOyyS0laYnOB3HYALQQU5pFlNET4iskn2YdVST7kN
Q2Td50791zf70R/16KXQ04nc2SVjYKh4yXs/s5MaZc3qOujh6KMWiKhrgyYgUtS3G7OMOa0+ZBy3
3+qnlDTTvaYqtobVNGSc5bIOTs8+nXX60amXOUCeEcUlDI2Vta2Mx1FOd2eMa78Z0KmGyk5ijfTO
JIb4mZ5t6LmoIgactAIEemvzAY1YevkeYWmiPw9Q3c07t26R06eyojLlFdj3Jomo4DCVaaaVr42l
hyCMhbkwhMEqRCkDJCQJVAAhCEAIUiUpFIAhCEACEIQAIKEIAEIQgAQhCAAoCCgIIEQhCgkEIQgB
SgIQpAEIQgAQhCABKgJVAAhCEACEIQAIQhAAhCQIAVCTmlQAIQk4BAAm+61jaeB7hq4DQLpqp2wQ
l7jhQu9V4qC9od9mPmOeJ6Km6zYsLqXU172Ri+zvqZmDjl2ST6paNjTLPVzDdjbl+ozqsWx/GVDZ
Gt+xbkj+I8j6BdcjWR07IAc7zgMfvElLJ4SiazSS2orO/bSto6ysjpakuZLGzVh4uGc/mV3bJ3S/
TWl1ZQ7P0VTQsk3H1VVI/eccE8d4fgFZOz2y9BcKepra6ipJZ6l7gHNiDQ6MaAHnrjJTnR7JW6kZ
3VPSyxxFweYWTuEWc5zu5x+C1lqKow27eTOsVspe/hEZ7Pb2663TebCaeRoG/GJDJHIw6bzH88Hr
qrAu8feFkTNN7VxHRbqWnigDWxRRsA18LcckOO9U5Psk5yjKWYrCO8ywsvJCdo4rg6sZRWVsdIWg
Ga6VUe82LPKMHi7z5Kte0G3XK3VMENv2orLyJvFI17wcO14BpOeY4c16FdFvDLSQ7rxWhtEWybxE
IPMtiAP1TFOpVXYqsq8zltooPs72X2rfdYKp1NJTUReHSPmIaXDnhvEq65YHRfM3XGpCegxsYJA1
PM8U23F/hJyq773dLc1g6qhsW3OSP3dsc9HJAW43hnPMKl73Qugub43PAcDkb3Aj1Vu3CtYJd3Kj
F02dfdqxk1NIxhdqd7l5qdLb5cueg2690MMjdgqW0k8TpzCHB+PBJunB0xgq0LK7FJEGnepx4mZG
O75aDpqQRyzpooVW7EyQW3vpAZJXggDk0hTTZd4ZaIy8AFhAOfTB/Efio1coyW6JXKOIj9E7u5Hu
dkPaQ1+OY+679D7rnrT3FyO7pvDXzC6o2ZfFufK/MR+mW/lhc96A7yme0ZcWZGvTH8knHkp7j7Z5
cxhp6p2UWtMuC9rScs4DqMqTsILQU5F5QrNYZkhHqhdHIoSpEqgASJUnNACHihHNCkAQhCABCEIA
EIQgAQhCABCEIAEc0FIgAQhCgAQhCAFQEiUIAEIQpAEIQgAQhCAFRnokShQAZSpMJUECZQUJFJII
QhACpVilUAKkPBKsXHDSUARXa+ucJoaOE4keOQUKuVVHJN8OzxRRnBDeMjuYz0zxW7ae6ONxrpWu
3ZHu7lh47oHMJgjhnikggII7zQH90fzSrhuk5M2NPWoQTY9yucxo3iMAeIAcT09Flbad08xnmcQ0
DI8geJ+iykpBJMyBgAbunAPFO1xhFHZKghuoh3B9D/NU5xhIlz7IdtjqgVFkpZW8Hs3h+Ke5pWxx
5OOir/soubajZaGEu+1p3vicM6jUkfgfwT7fal8jIYYnEOfI3JHJo1JTE47JOPoU7d0uB/hLXMc4
vbn1XI5zZJcsOQ3ieSj09PW0jJXUUk8+87fEcrs48gcZx6ppi2eq7nMJqt9xhmJz4apzQz0DThTD
a+pPl98kxiujoap0bhvRj7wTw2Zj2ZBTFbbPHQwsZvvkI1JkOS4+Z5rXNM+3y7rzmmccMd+6eh/Q
rl8HDSk+B9qJAGHUKNXitawOaCsq24gRnxKJ188k83hyQTzU9eC2qrnLG2Qy1VcQ0nGeSkttiMEb
BrkELjs9HuuL3BPrGAPhbzfI1o6kkrqT3PCLLJrGDuqGvfDGSwNIOWA+LGnE9T5Jm2dEMtHV0kLw
/uy4F2ckk5GfqpFfC6hstVUylsQgiecuIy0hvHH0VXdmFw3RVRuJ0a0A548z66j8V26m63J9hRTT
WEWbSPHweXcQ5jvcFcldIHuhI/3cxBH8JBz+axralsFrkla7g7PtkJg+NDqmqaXHDomyNBPIg5/V
KwygcN3I+UE7oqx+v3TxUzpntdGN0+EjIVdU8xLBJnDhhp9Rz/D8VLbJU/ZCMnQ6tyeHkr6n2KLo
9x/CVYRuy3zWavFxQlSBGVAAUiVIpAEIQgAQhCABCEIAEIQgAQhCABBQgoARAQhBAIQhQSCEIQAJ
QkShAAhCFIAhCEACEIQAJQkQgBcoykQoAVIhCkAQhCABCEIAULCbSF/plZ8lrnZ3kEjBpvNLVDAo
ycmqujXnJDpjj0ySpHU0ZfdaZujWhu+SOYHErmuFH8HUxySMzFG4b45jAwU9SOEWHyDxNYIweRDs
Ywk7JGxKfEXEzooN65b7hkNa4/ku3aKIOtj2AjLhj6hctNN3bZXnGcYyui7v34WjoG6/RL78FSTc
sla7LGXZzaWnglO7S3IviYSdO8acj8yPcKwqhk7KxlSGb7WQu8I110UI7SaCWfZ+nqKPLaikqnSs
LePDOfbAKm2wl8i2j2bpa5hAmIxKwH5XjRw/1yK0ZrzIK76P+xCsxPaM+ze0tyvtZVRUVPL/ALOG
udkhg3STjGfRSWSn2gnjJbTws3TjE02M+zf5qD9p8142VmN72cl7hkoEdRhgcAM5BweROmfPzUej
2m7SNoqKSSlqmwRy4xHTwsjcG4zkEjIHur4abfHzItJfEi7UuM9sI57ljXC1bVFxMFTQsfv7oaxr
gMYznOeCYLheNobXLBT3yipp4qhzGAQTAvJdw8J1UFZs/tlV1sba263Frg7v89+95ZJjAOh446KZ
bFbAU9Feae61ss9TNTj7LvnZ8X72vIZOPMruVVcF7Uk/oCtul70UkS5lsD4297kEaHzXHW0kcWN0
YGFI6zwxkjiUx13IErOLIybZz02GDH1W+zVcU21LKXexJFTumYP4i4Nz+JTXWVPcsOuCq7dtZLs7
2hw10wLqQxiKYbuSYyc5A5kEAhM6al2yePQq1UvLhufcsrbLamqt+3thsz4P/h1a3dewxbwlc5xa
d451DdHfmovtRUUtn26qX0TGsicyOKVseA3fGTkAaAHp6qYf16stziL7bU00lVqY2uYXOzjUgkAj
U/hhVRfYZxcah0gcXSDfB5Fp4/Q54JhYk9kljj9SjT1PmfYmzrt8dY3AEgua9vo4EFN9rrO++Gld
neb9k7zByB+qY7BcABLTTaEgPz1xz+n5LKCobQ18sEhPcyHIOeR/kVR5O1yiPrDRLrdUkN3T8oOM
fuO6KT2mrAjy0g41ChbXeIOcQ0yjdd/e/wBYKdKCqeWNkjPjYdxzeW9/mlnw8oqshlFp0UofEwg8
Rn2XUme0zNdRwPYcsIB9jxHsU8DgmUZr4eDJCRCkgEqRCABCEIAEIQgAQgIQAIQhAAgoQUAGUJEI
IBBQhAAhCCgAQkylUEhhKEIUgCEIQAIQhAAhGUIATmlykQoAVCMpFICoRlAQAIQhAAhCEAKk5ISk
qAIxtLa45O8kcPsphuvI+477p9DwPnhRGhe8Uz6SqH+0Uzg3U8WZyD6K0ngOaWuALTxBGcqHbQ2Y
QSmqid9m7AwTq05015jyS90OG0N6e3HsyGwOZIBGDgnDjnzyuqoO9HjkC0exH80y0sjJ7nJTMO7M
WlrMfvAZGPcD2KkVDG2ro2TD5ZGa4H+v9BISi1hjje18jHXuP7Pg3gCTUHjwOirjs7vJ2V2+qbVM
7doauYxAHg1+TuH9PorB2kBgmpIS4gh7pCB0/wBFUvt+MbVVkkZLPtd5rhxB/wAls+HRVm6uXRoV
1eYwjYuzPSe0dMyopi2WATwuaWyREZDmnim+nnoWRMjxO1rWhm6GaBoGAMeQwk7PL8zafZSlqnnN
Qz7KccxI0a/XQ+6kfwbHalrSfMJZ7q5OL7F9dsXBcZGBtVGTu0UE75CfC4nu2jzONU4UbHggPdvP
I16e3ku8UbWZ3Q0eyGsbEHO00CHJsidm7ocdyI8DM6c1H7o8NaSTw1XZX3BnevJPBQ29XMyymKAl
zncuKiMW2d1xeTRUTPravumZGuvooztLa4rrfI6QNy/usAjTd1zk+imVNSigtss8n9oW6lQN11Px
05gdh82QZOeMHA8uqd0+ctw7BcoyW19Dq2bt1FRbVtgpyC0juWnjl2M5P0VnXLZ2Cehje4DejIc1
2OH+Sqm0U8kdE2cEtkkkyHjQhgOgB654+yt+ybRw11qYZQO9Aw8Y48icKjW53qeehVFOMVtWEVjt
JZn2mXv4NWanB4jrg9Oo/Tg0VREpjc/Vrhhrjy8j0/1xU82iqu+D4GYyflJGcEcEwstkc0TnRN7s
EjfjGcMd5eXkrKr/AGU59RhReBaKqzEKefUEDdd58MHofPgU7Wx5NWWgjeIG+3HEcnBRe5Tx0b2U
8odHK06Fo0A/VSTZKSOW5U75JP7MHL+Rb19clROvjd6lc5JJlkWKR8dYKZx/tIRKR0dvYz7gfhlS
tvToo/YqWQVD66du4X4ZGw8Ws4DP1z7qQjRcpYMybTfAqEIXRyCEIQAIQhAAhHBIgAShIhBAqEIQ
SCCjKMoARCMoQQBSJUnBAAhCEACUJEBAGR4JClQUEghIhACpEjiGglxwBzTRW3TOWU3/ADfyVdls
a1mRMYuXQdJZo4RmR4auCa7sacRMLvM6Jme573Ze4uPUoA1WfPWSfu8DEaV3O991qD8oY32WH7Sq
s/OPouPXKXmqPPsf5izZFdjubdKhvHdI8wuqG6tccSsLfMapnx56IK6jqrY98kOqLJRFKyZuY3Bw
WxRSN743BzHEHyTxQ3IPIjqMBx0DuRTlOrjPiXDKJ1OPQc0ZWqWeOMEuJwOgyuCsvtvo5NyomLX4
yWgZI9U1KcY9WcRhKXRDohMDdrLU9xaySZxGhAjW9u0NvcMl049YXKPOh6nXlT9B4KxJAOCuCO9W
6TQVbAf4st/NZV9ypKagkqXufLE0ZPw8ZlcfQNyVKnGXRnDhJdUdZcA7HNMu0cocwU+mcb5+uAm4
bQtqY4302QHjeaX6O4cC3kfJMEjrlLdDLLVmaAtIG/gFmoIGnJU2XRw49xiqmWUzXDAw3YSQnfmg
e2Qx4IIJ0Bz00KlduMcE81I0YA+0HQ7xJP4lR+9yG2tdW00WTMAHvHEA6Z+v5hckN0JdFUskJEZw
4jmOBHnhK5ckn2HHByWRz2pt7XyR1OPFFnOOhwqE2xc2etkmjwcucCFfdzuEdTQtfGd7IwR16hUZ
tLaKr9pVjaWN0sMY710gGjGnmStLwySVjyyq7c6XHA5dj22MezV2qKS4P3LfWbuX8o5BwcfIjQ+y
vn+sFGYWyMnicwjIcHgheTHxuBwRnzPFYmaWBzWxySN0zgOwtTUaGN898XhmfVe6o7ZrJ67jvNJL
Fvioi3f7wUW2k2zpYWGCke2SQ6ANOfqqf2CoqS9ump62pqoagDeaWP0cPRO01kns9V3VVCXhx8Eo
JLX/AOvNZ8tPCEnCT5NTTqNqUkOtRdppwWg7zieI5p1sFrLj30wy9ya6Cj7mdpnY5rjwy3gpzbY2
tgG5xxxVM5JcRGbcQjwRTtGq3U1kFPCcGRwBx05qvKSmc9hkOhc/HDVTjtLieYYHgZaJDj1Gv80y
22j3rZ/Z+Nu8TrjODnT2TNM1CpP1YvtyTWzbORVdmod3Roa5x885wmyojkoq5zQNxu6G8ePHVO+z
V1fJSsYwgMLdHA6cP/ZO5p2kmWSYw7wySGAklZc7JRm1I6jJw6kSngllDHBmodxwnm4x0sFOxtOR
35aA/HJunFcN/u9NA/e7xj3gavxoSNOHI81FP61ObI5krg6M6Agq2umy1JpHU5Z5fAbRuFbdqkvi
a+mG60kHdLSOYP6c1ZPZvstFRUIrKqN75pQCN9u7p6Jhs+zZdMyprBv73jDDwBPlzWvaftLi2Zaa
CzSNq61vhc15LoofXqfIH16J2ClZiutZE9TOMY5TLhi8bd3U44krp56rzZZ+17aSkuZmrZKetpnD
DqeRgjaOhaWjLfxVh2Ttp2erGtbdIKu3S8zu99Hn1br+Ctno7Yds/IzY3RfctHKE10O0Nlr6MVVH
daKWnJx3gnaAD0OSMHyKcmPa9jXxuDmOGQ5pyCPIhLtNdSxPJkhCFBIFCEhQAIQjKCAQhCAFQUiC
gkFi9zWDL3Bo81wVtybESyDxP5nkEzTSyTO3pHlxSluqjDhcsthU5cse5rpDHozeefJckl3l+5Gx
vqcps15pDx1KTlq7JdHguVMUd37VqejPogXaoHERn2XAThJnRcefZ6k+XH0JehCFtCQIQhABlZBY
pQcIAUrF7g1pc44ARlM14q99xgYdB82OfkqrbFXHczuEXJ4NNxrnVD9xmkQ/FcI4lGeSMjnhY85u
csyHVFRWEKOKx72P/iM/5gtwtk9wglgDMMlY6PJ04gj9V5Xc+po6qWITSxyRPMZ3XFpyDg/ktDRe
GvVJtvGPgL3ahV47nqA1MIOs0Y/xBYPraZvGeP8A5gvOMF/u0H9lcqoesm9+eU5U22l5iH2k0E46
TU7HfiACm34HJdJZK1rYd0Xu650o4StP+IfzWLLpBJK2OIh7zoGhzdVTtqu21m0VRUssdqoZe4Bc
S2EA400G87U6jQLU2t24o6t5EkNHO0lrgY42lnlqDhV/8TGLxOaX1LFfvXsRb+heWKv7tM33malZ
DXvcPsIGjqZC78gqmsrdsrpJO64bQ1ccYicYzTyBgMmm6Cd3G6dclMF5G0UU12gq7pcpJ7cSKgtq
3uazBwToRnXorIeH6dy2qWcErz2s7cHoqM1IYGzuD8fwkY065yq3u1TbLVHWMvNVVRTxZY6NjhNv
seCGnUNy3mDxBGFTtrlqa8TuqZ56iGJhJ72ocMdMZdqfJdVst01XTVcFLE8maNzd0gakDI4Hjpom
56GuPDl0wRprLcb498/Ymuzt22egeTJeGzvLch76d7C0jiSCSrBt13twbTTRV7XU8jg0d8x7WuOf
lyRgH3Xl5rS4gALpbU1UMBgFRMyLORGJDuk+nDKs1Hg9drzuKF4lJ++j1Pe9otlqQzMnuEcb4dHh
8Ug3T5ndwonBttYqG7tnqblHDSkZAiZI8u+jcKpKSvrK+0hlU2WWGFw+2JyWtA0ZjgdRnXpnOij1
VO6effL3OGTguOT7qijwWrdiTfBbbq/Lhuj36ZLw2v7VNnaqkc21U1ZNVg+CUsETR65JJ+iruTbO
6TSwyTSE7rg4NHhbkdQOP4qGAndIzot1NFJO/u4Y3ySfusaXH6BakPD6Idv1EVrrlwmegbXtNDtF
ZWmMNZUlrvAdQ2QDxNPkRqFXx2mrBU/DmINZvFrmgYxyxqopbHXK01TnsiljIAc+N43ctHPB/NPk
9yt81bT1Ez42vkP2zTprjRyQ/BQpm8LKfT4GnTqXKHL2tdSYUVZIyilikmySCWgdeP5Llob5FRx1
XxMffRPbulnXI4f+6Yaisp+9DqGpaYgBzzhMlzr2RPcCSWu1wOi4r0m98rqNz1EYQbb4Ov8AZ8Es
r5qiR0NIwF7nNGf7rBnieX4pnuVvmjrGl7cCRrXt9CNF31lyjq6CmkYSO60dCT7Z81YNspYquyUF
RUxREBm7FJoRI3iB5Him53T06UmvgJKFepbimRfYy218FwiqqaF27G4EvxpjmvQdrpIZaZr3sD3E
DJIyodZO6kj7pjQ3GgGPwU9tkXc00Y/hCyrrndLc0NSgq4qCGq8WKOaMOhA3s5wVlTWySCAbwGeg
UgI3iNEObnTCp7nO94wQnaCztqqJrHsz9s0nI4Z8J/NR7Z+hdTudSVTADjcAPNzdPxbj3BVqva3c
LSBqoZtRSPgeZ4m4c3X1P+vxUTb247Flcs+yRGNhsVfJFJFikm1a9um7/r8kzX3aKS3GSKBwdTvy
dx5ydeODyTnfbpBW0p337so4jgQfRVTtDWGetkw84BxkpzR6fz5ZmiNRZ5Fe59Ra28zTzbwOQTqA
cZ9V1bMfACv+OvVW2KhpnBwiHikmdxDWt6dTwUac/IwEYJGXcPzW75Edu1cGDLVTlLc3ksDavtMu
F1ifS2phoKR2jn5zK8dMj5R5D6qDRNzr9VhBGXOy7h0Wc8ob4WLuuqFS2wWCmdkpvMmb8sCye5gb
khcsYIbvvOByzzWE7zo0HPVWYOcmwzOkfhoGPRTPYDbS47J17HxSPloHECekLvC4cy0fdd0I9CoU
wNib4zgnlzWbZgRhrSB1JXM4Ka2tcExk08nta31kFwoaespJBJT1DBJG8c2ldC80dlnaBLsxXNo7
jI+SyzO8beJgcfvt/Uc+PFelIZY5omSwvbJFI0PY9pyHNOoIPRYN9EqZYfQermprJmUiEKg7BIgo
QABKkQEALnAJTLcq8yExQHwDQu6rdd6zcHcRnxEeI9AmcaDis/VajD2RGKq/zMCkJwgnkgNLzutB
J6DVZ6WRkTKQnK7IbbUyAHcDB/EV1Ms5+/N9Gq+Omsl0Rw7IruNB4dSkyQE9/smHnM/PssTZ4z8s
z/oF3+FsOfNiO6EmULWEwSoQgAQhCANNZMIKd7zxA09VF3OLnOLtSTkp1v8AN4o4gf4iE3UlO+pm
DGcOJPRZmpk7LNkew3UlGO5iQQyTv3Y25PM9E+Udtigw5/jf58Aummp2U8QYxo8z1W4pmnTRrWXy
yqdrlwhHSNhG+4hrW6ryT2h07abbm+sjyI3VT5G56O8X6r0xdaszT920/Zt0x1KoDtkpO42tZOBg
VNMxxPm3LT+QT3h2pUtQ610wU6irFe5kGa7BWbTxwtQ4lZtOFvsRRZ/YlJWwXgS9274CSobEZDnA
kdG8YB6+Fqt7aMU8JZO+CCSfB7uV7N5zAZATjOmQHqmOzi5dzs5dQ44NDV0te3B1DRIA846Y/NXZ
tLC19PCQ3eJL42noS12Pxa1eU8Tcle3j4fZGzpktkSNVkO67u2HALG7meWW6aeqgnaNszcWbXxyR
b8Ed8aPCDpvlre8BA5A5KnE0v2uc+NrWuLdfBkZA1ThXW9962jsFbUzkdzT1ALnHPi0x+B/BK6TU
OifzT/YbnHOGyhrtbooaiWgpCWxQHdA5vPNx8ynXs+qHU1SSAzvoX94C5uSC3UFWHNsVbpa2o790
k85kf4IyY375J4nlrjVdlwr7ZZOzKeNsdL8ZE4w7j3tMzakPIdvaanic6ZBWhLXq+HlRTbeF9SNk
a5Ka/iKN24t7LbtrdaeMbsJm76IfwSAPb+Dkz1EYdIxuccclSnb2Y3GWw3XuXME1G2lfvc3wu3T/
AOEtTG1h+PbujJa3Ix1JW7TY/Li31x91wYrpTnKK9TZPVyUNqNDCSBKMk568fqMD0TRFTyvaJAw9
3nAOOJ6DqfRba6bNYctyGHGDzPNPGz9TG6qqKmvke6ojgIpWt03XZGgx8oxvDThnKsz5UNyXJE1+
IuUM4S4+hlQ2elpXxy3YjuXD70m4M4zu6ZOeWuBx1WTKmKuqWUtsdNSwPduOER7tp3v4Qc4zjiSt
93t4/aNPM1nd09Qxr2sGd2J5zmPJ446nUjBTUZ46a5TGgDxvN7kjQ5dnXT2z64VEc2e1nL+w1PbT
7O3Ec/VkhEb7NSSsdZqe4VGSyeWYueWg8BgEYB0IJ4pov9Zb6oTyR2+KAkbrBA9+GPGBxdnTGdPT
BCdoLLdJbBUVtJVSbpl+Gk3j4ZYnFpB827+VG71IyKlpaCLURZke/ePicfLhoPfU5XFCjKfXLzzh
s71U/wCk2o4X0+3ca2PdG/eYSD5LbO90vicckrRhZA+HC0sLqYuXjAgJ4J0s18r7SSKOciMnLon+
JhPXdPPzWFvs9XWyxNjhlPeHwhjC5zvRv/snb+qVcS4xwVAjDtxrnBhJPQhrjr5Kiy2r3ZtDNWnv
ypQTTJTsr2ozWwBl0tcVWf8AjRP7p59dCD+CnNP20WQgCW33KPrju3fqqFuNHUW+UMnj8J+V4BAP
+fkuXvzjgqHoaLPaiv0LHqroPbZ1XqejW9s1g3c/CXP0EbP/AOlrk7a7KD4Ldcnf/jH/AKl5278j
hkI73+Irn/jqQ/HTPQf/AE1W0u/+U1uP+8jyuWv7ZLZLA9rrJUvyCAHzsGfoCqFMpJ4lZNPN2deG
qn/jqfQj8bPsSi/7W1Nyle6GlpqONxJ3YxvO/wCY/wAgotK50jy55OTxJQ9+7o3GVtDO7p2SSNyX
uJGfLH803XVCpYisFFt07uZvJrDWxty4ZdyBSNzI7jlYFxc7JPFdEIEcZe7lwVhSZSvELN1vzLni
AJLn/KNSsfFLJgaklbXBuN3Pgbx8ygnqI95kdk6DkEhIjzgAvP4LEv8AFnosWguJKCAHHLtSVsDj
1WA44GpS4DTqcnoFIHRG7B0V39g+2pBGzVzk8Lsmhe48DxMX6j3CowEg+LA8l0U88kMjZYXujkYQ
5r2nBaQcgjzCpvqV0NrLITcXk9soUW7ONqY9q9moapzgK6HEVWwaYfj5sdHDX6jkpQV5+UXBuL6j
6aaygQhC5JBa6iUQwukdyC2Jov02GRxA8Tkqu2eyDkdQjueBsfI6SVz3/M45WI46BI0FxAAJJ4AJ
9t1AIQHzAGXGn8KyaqpXSHJyUEclJa3SgPnJY3pzKdoaeKAYiYAtqa7vXGIdzEftDxPQLSUK6I5F
d0rGba25Mp3FjBvyDkOATTPXVEvzPIHRq5PPKM44lZ9uonN8PCGY1KIrnuPFxJ8ylbLIPle4ehWv
KM4VSk89TpomCUJMoGq3RAUoSIQAoSrFKgCO3Yma4FjRk6NCeaGmbTQBo+Y/MVw0YY67Tl/zA+EJ
3CWorWXN9S2yXCiKua4S9zRyPHHGAuhN98OKLHIuCttltg2cRWZJDDxwqv7caXeprTWY1a+SEn1A
cPyKtDTdUM7XKX4jYmokAyaaaOX2zun80h4dPZqoP44/UZvjmuSKHHBZtOoB4LDGEo5r25jJE02B
b3V2qrfK/dbcKKeAbhGriwlo89QF6Ds1S267K2yp3t5z4I3uOfvboz+IK8vbMVjqHaC3VLTkxTsd
g66Z1H5r0RsDWwzWKW3x4DqSSSHoMb53R9Hheb8ag17S7/z/AAa2ke6v5CXqGFlZDuNAmlaQcfe3
cD/Jcl3nuEOzAmtcjo62leCA3i5pDmuH0/RYXipdLPTtOR3EhadcZD2hw09Qu+keKmhlhcAS9zmg
Y46B2D9CsNNx2z645NCHGMkFsO095uz4oaKYtr3PEbpCN55ceDieYPH6rjo6GhqLjeLHXk1VcQ9t
M+PwmecfMN49M5wcZ1XNtBQSbH3pk9E91PBK/eilxvERkjebjmWnlzxphOe0NdJbds9mqM08MbaK
VpE9PE5oqN4gFwBGcjeGc59SteMYt7qekk38crn/AFg6slsjtfYjO09qfR7LVFFI3elst4EDntzh
wkjOozqAdwcVDu+7uoq3hhcY48jAzg8BnyyVa3aZQVEN82oZE3egnioKx+uQPtAzPrn81V8Z3JKg
Mye9cWvBIwW4IHrqc+y19JPdXl/zOG/7mTanvyjisJtor4zeI5paUktkETt14BGjm9SDy5rq2hpK
WnuE0lnqKZ9CMGF0cp3yMY8TXah3UfTRMXA4PJLkrScPa3ZMpSwsEs2dvMczWUFya59I52XMa7Gu
CMjOgOvt6FcTrXLR31sDftGxlszJdw+NhIIf6f5piikMcjXN4hTynnlraGlqWvzFDFLT7zMB4Dm5
w/qM4PscahKWR8mW6PR/uaVU/wAVXifvR/Yk010jrLTeqWLuoGQRRSNMYIbkTZcQDqBknA6YVVX+
WKa61D6dhZFvYa0nOMaKwqagq6rZ+51bKUiVhlhqC3OC0sDm5/xNd9VWc+TI5x4nVVaCuMZyx/OF
/g619rlVGPxNPopBZqGOjFLX3CkdUsldmGnOQJBwycdToBz+mWu2UjqqWR25vQwMM02TgbgI0z5k
ho8yrM7OBNVXebaCvhbI2ja5tJTtGGteRjRvRox6ac1frLvKrb7fzgU0dW+ecfIYL9ZNpmtp23Kg
kifVyZjijeG92McCwaj36Looth3U9FdKmaeGtlp4u7iFNKW93OXDUkjUBuXdD10Vn2jZu43ihkv1
5dKx9U4sghYd3dYDjJPHU8B0UXullmtE1UYXPFLUs7uUgeJmuQ71BHuMhY68Qmn5XCfwRrx0lc5Z
lJtlV3W41VVG2mrSHyQOLS8/MfXqeOvHHHgE1qR7V254uJqgGRtnJ7zXDWSAZOPJw8Q9cclHANM8
lv0OMoJxMTUqcbGp9RUiyijfK9rI2l73ENa1oySTwAWb2CMubkFw0OOR6KzPYoxxkRjQBvO4dOqx
c4uckLi5bYw1rd53Dl5qSADRG0PdxPAKX7F7LDaibu6i4QW+nhp+9fPN8u855DW6kanB+ihkjy5x
c5Pl872hkprc0kNZDTzPD2/f7oHUdBvlU3bmtsXhltWE8tZR37YbD3XZWUPqmNnoHfJWQ+KMjln9
0+vsorLIXnHBo4BW5adrbnX0rZaWoccs7uWjq4Q+nmGNQ04x7HgmW62Sz3J7nimlsVadSIWmald/
h+dntkeSTo1sl7F65Xp/j/A/b4c2t9HKK/jduNIGhdz6BYvfnQaNCebnsxdKKN0wibVUoOtRSu71
g9cat9wEyY/BaEJxmsxeTOnCUHiSwGM8OK2Z03Ge5WA8uJS6AYB05nqujgXgCGaDm5JvYGGaefNI
473kBwCRACg/VbWO5FaQs28fNSBPeybak7NbWQPmeRb6vEFUOQaT4X/4Tr6ZXqc8Tw9l4iZkHr+q
9P8AYvtN/WDZNsFTJvV1uxTyEnV7MeB30GPULL8Qp/7i+o3p5/lJ8hIjKyxkFHrvJv1rxybopDyT
BFB8VdJQ75GuJd/JK6pOUVFd2XUtJts67RSBrBO8eI/KOg6p1KQYAAHJKr661XHaiuUnJ5ZhM8Rx
PeeDRlRSWQySGR3FxypBd3FtA/B+YgKNj8gkdbLlRL6VxkXKNCkCEiX5BGg6JceaPVCIJchCFviA
ZShIhACoQgoAjlY91Pc3vbxDs+qkEErZomyMOhCY76zcq2vxo5q12yt+GlDXk907j5JCu3y7XB9G
MSjugmiSLhvDN+gkxxGCuxrg9oc05B5oe0PaWuGQRhOzjui0UJ4eSIjimvayk+O2Vu1MBkyUz8eo
GR+ITzVQOp6h0buA4eYXFca2lt9uqKqvkEdNG0mRx6fzPBY0N0LVhcpoebUo57Hl4HeAJ6LJvApJ
CwyOMWRHk7ueOM6Z9kgK98YPc2xuLJA8fdIIXofYmUVFfXySbzW1MUNS3dbgEPZjPDk5g+q86g5G
OqsGy9oNTYI2/FU8jz+z44qQtAad0OyHEnO8Ad7lroOCzPEtLO+KUFz/APB7SXxrUlLuWBt7O7Zu
P4+ohkqIHxxgOhGQ1zScBx4N8Lhx4qv6btaqIKWti/ZUW9K5joXtmLTHgOBOcakh3LCZr7t7V1jI
22/eiBe6aUywQEmQjBcMN0065OVCnuc5xc7ieK40fhcFD+tHn5sNRrpZSrl9ie1vaNW10dPTQUMM
MTZWPLXyulDyDoHF2TjquS8V1Xdb7NPM6CKpJDxDFvbvHJAzngePkmW37PXmW3092prZLU0LpzC1
4G81726lhAOf58k/bOXJ9XdYqX9n97bJahrqiExNlkDCcDjg4HIgj+d709NCbpS4znk7p1NlnFrb
LH27uzX7P2m/PttBX1FVRRNe2eMljHB7jjRwwN7OmvAKHU9ph2i2fqHQwx0lXITVUsMcXHUiTcJ1
LcjRuT8pwt23wjutts9NZKOopI7cx0To6otbK8H5HNGm8MA5xrlPmyFBW7PwxSOpJLpRu7uONpiI
dvAb/ha7BA+bhrkZWZu8ihSi8Szwvh+3QfrrdljTj7OCnKu1VlLTCpnhLYXSGNryR4nDjjy1Gq4V
fOzmz1Hdn189TbZ2GTeljpJshj4SeAOMg566jIOqiUuw8ezG0lFX3MvrLBFuVD3RxCR51PgfHnIG
8OJ0wPZadPicJtwl7y+/yMvUaDY15byv2K2fDJGxj5I3sY8ZY5zSA4eR5p/2LuDorh8BLO2KlrcR
PL8brXZyxxzww4DX16qxtv7jY6vZye02msguFzl3JR3Ex7ljA7eyN86PwdQMemiptsTy4NDSC7hn
grqbPxdT3x2/zqVSi9LanB5/nQ9IuvUtvo6y0w0kDIrlb5KiPGo71jfG36b3/L5rznV4E7g3OPNW
idsqK32mxmoe2rudHVb4NN4mOgLN14dv67zmnHDiAVXdYKCquFMY5paWCQkSyTR73d+I4IDdXeHd
z5+SW8OrlWnuX8WRjWyhJYi/4xz2Lub7RNG6J7IfipgyaV8e/uRNwTgdc5+gwpvs9YTSTy1bKycy
zElvfU8tOHMeckHIIxwIIPLzUM2efaZrnQU89Q2no4ZnSySyjdL27o8J46k5Cu6g2gt87GikuEUv
QMnB09MpPxS+db/pxeX1/t2GtFCCSy84N1PtntCwMgr7dS3SkPzSU0zGuPTDSdCPx8k7VUFPd6Tv
YRKBg5hnZuPb1BB4+oyuN9XFLrJTQTNx96EfmFkyW2EACmkgP/ZTEfQLz1l7ny44Y6q4r3SG3vY+
Kqp5oMkb2d1ucEe/PXXy9yqWvtpqLTXPp6hjgAcNdjGf816elZQuaAyvqGf97EH491D9v3WOjtb6
m8mhuMZO4yNsTmTudjOGkEAeZ5ZWn4Z4nZCxVyTaYvrNNG+O5vDXcrPZTZ+mZaDf7zIW0zZQyCmZ
pJUY+bB5DTG903jyC27ePkulutlydSQU43XxtEUYZ9lnLBpxDdQD005KS1FLUVDrba6lrqanrZI/
hu6pWSxs3mAAFxI05AcsHOqbdu9ndpdn4GR1T4660QuJa6FmBHvccji0HHplakNTvvUpSWW+F8PR
dslc9PVXQ68Z46r19fkVqBpk8EjnFx14cgu6voXRwR1kALqOUlrXcd1w4tPT3XBhbUZKSyjCnBwe
GB1BCfbrI0yQV1HWyyyywlspkHiYWta0tzzGPwTEOIUrsNZQm2w01VUmHdmkkd3gBaCQB4QBnUAf
RVXycEpJZGNJWrZ7G8fEntg7SLD+wKe3V9oMMdPG1jtx7S3dGm8AdSfLjlNN1vmzz9ya3XGWnLg7
ME0e9u4OMHpniNVrbfdlrfu+H45w493Rhv4v/ksf+kS1U4Iptm6aXzmDB+DW8VhLTe251VS5+OP3
NjzfKWHbH9GdFqv9q3h8W2kc8DSop6gwyY99CuqrpNmL8/LqtjXu+/OxgcP8cZz9QUxM7SZRUbzb
XSQwgDDYmNyCBxyR1XHJ2jXV5OaW3FruIdTA59VatJqM7oR2v/2/0Vy1dMl7ck/o/wC491HZTU1D
j+xK6CpPHcbK15H0wfwTTV9mG0lLa5q2WlAZC8tczDsnBAznGNSVwjbu5h5c2ktLc/u0TB+PFO+z
22F7rKumioLW+qqWnH+zTSx7/jDvFg4xpjiAAmV+OrWZNNfT/QnJaSb9nj9SB1VLPSTGOqifFIPu
vGFpXpDa3ZumvexzKy7wfC3UBz3RvfH32jhoS3G84A/NpkEF3Vec6hgiqJGNLi1riAXN3SRyyOSb
0erWpi+MNCt9HlPh8GDVm0arEJcpwXNrTjgpv2SbR/1d2wpnyu3aOrPw1RroGuI3XezsH0yoK12q
2hxxoB6ricFOLi+5MZOLyj24fNIq97GNqH37Zs09xrhU3SleQ5rhh/daBhP73MZ+qsJedsg65OL7
GlF7llAmGCo+Fuku98jnEFPxUbvDNyufgfNgpLVNxipLsXVctxZJRyxwSpqs9YHsEMh+0b8vmE6F
X1zVkdyOGtrwcN5aXUD/ACIKjY1Cl1RGJYXxkfMMKJPaWOc12jmnBSOtjypF9D4wIEqRCRLhcpCU
hQ46IXUCYoQhb5nghCEEioSIKAG+9wGWl32jxM1Ue5lTBwDgQRkHRReupzTVDmHO6dWlZ+sr5U0M
0T/Kzdb7g+m8DvFGeXMKQQzMnYHRuBBUR5rZBNJC/eieW/qqqdU4cS5R1OpS5RI6+ibVsABxIPlK
869se0Tqq5GzUzwaejf9sWnIfL0/w/nlWf2h7eO2fsLo4MC6VQMcDh9wfefjy5efovNszzI55c4k
k5JcdSV6Dw7TQtktTj5GfqLZRXl5MIzlqybqcDitUTjk7ySWXGQ3j1W1jkTzwbXv3MjGSuc6nJJJ
Ssdv4B+YcD1SKTlvIIPApDwQNUHJJdiNqJdnauVksQqrVVAR1dI4+GRudCOjhxBV2fs+319oZW2A
QEzjeZO0Ad8BxZJngevRwzzK83KY9ne2U2zNcYZ96W11BHfxDiDw329HD8RosnxLQyuXm0+8u3qa
Wi1nlPZLoWHS2mkutxkdWPmgrGnxYOfEDrkHmOf8sKQ0Oy9PBf6a4SVdTLHC8vA3yCSdcnXGRwB6
aLfcYaathgudlkjkMjA9sv3ZGjjkjmPMacDpwcbdMHl7JN1s8Z3Xt3gQ13TReblfP8r+GPQ2bJNx
4fBNYI43sJiwWPGXN/e9fNRXbS1VLrRWNtsjG9+3dcXxh2RnJaegPAjpqu+hrHU0oIP2Z4hOlxq6
KkonVVVIGQPDQBnV7j8rW9XdFEJbnmPVCy4Z5G2kqZbdcHUHdM7iEeGOWJjiwu1IzjJ1OhTT8cw5
zSwDIxlrSP1wpL2t1sVbthK6GDue7hjjcA/eBON7I6aOGnUKGL2em9umMpLlpGPqJONskvU7xUUr
5N+aDjy3jhEApN4788rQQRoxp0PqU37zdNRrw14pVftRU7G+o6SQUoafhZg49H5BP4LiNLKXFwDC
Rro4LRwS94R9/GPNCjghy3dhypblcqKRj4pJmlvDDnAe+Dqnal2wv0bh3l1ka3OSHBrj+IUaEzxz
HuFkZ3HiB7ZVc9PXP3op/QsjfOPSTLAg7SKyLDXxxVIHE92GH8E37S3en2snoWv3qNzSY8uO8zxE
DJ6AKINqAOLGn1AWxtSzP9kB/dJCXjoKq5b644Yz+NlNbZ8ovOk2i3XNs16s9RLSsIhZK6FwPh0D
2uAHIZHHknPaS5OqaCGSy3P4xu6WOEzfGCANOGnmHDBUT2YvN9fRR1kVbJTUsgyx1XUtqWluMax4
zxB10WNdtxPHXbkUzZQ8tZNIadjWvA4hrPvcfdedlo35mIpcfHK/b+5uQnFxUxght8FTc+8oqFvf
kg1lnc4sbUs4kwnkca7vEcshMe1GzTaCF1zssrqyzOfuGRzS2Wmf/wAOZv3XDrwKe66muNZWfENp
pJomhzWRRyBs8GHHdw3yGPDy5YVg7J0tJf7YyamucUe07GujmbLH/wBYZ+5URO+cY0z78VqefOjE
08ruuv8APn1+fbPvphY3GSx6eh58YMvAKTPRT/bjYyS1ma4U9M6ijjcO/pHEubGScb0Tz88ZPI+J
vPPFQQxFpweIWtRfC+O6DMi6mVMtsjXg4yjGCOa2MjfM8RxNc55OjWgkn0AU3tHZZtPXwsnq6eG1
UrwCJrhKItD0b8x+i7sthXzN4OIwlP3UZbH9n7b7ZDX1Ve+l7zPcNjiEmjTgl5yMa8AMnmksOwsD
6u6QbR1r6D4bSBzQA2oOuSwuHiGByHPyV37B7JR2C0fAwTXC9NyHD7IRQMcdXBrnY0J15qXR2Ksm
c1zvgLeBoO5h7+Vo8nv8I9mrAs197nNRfsvp8DThRUlHcue5Udo2BsEFNHPabFX3yYNBdLcJO4p2
HHPI1WG0Et2pbJWywbT2y00tLGd6mstNvBryPAx040GSMcc+SutmzNve8SV4nuMg4GtmMrR6M+Qf
RadtrBHfdi7pZ4o2RiancImtaAGvGrcAeYCqhdJzTsefnz+/+iyezbiCwVJ2FyG8bPVpujpKp76l
0TjUSGQObuNJBB9TlUltfBFTbS3GCnaGxRzFrQOQGi9A9mFCdkOz6SquMW7UOeZA0DJMr8ARgcyM
AH36Lz3tRUR1W0FfLC7fjMpAf+9jQn3IJT2ge7U2yj7v2F9RxRFS6jXlCELaM4UFbWFaRjms2uaO
JKAJf2b7THZfaqkr5Gl1KQYahoGvduxkjzGAfZesIJWVELJoXtfFI0PY9pyHNIyCPLC8SxuZkYcc
q+OwnbNklONmrlLiaPJoXuPzN4mP1GpHlkclm6+jcvMj2GaLMeyy5U0bQReGKYDh4SnYLXUxCeB8
bvvBYtsN8HEdhLbLJFWPcx4ewkOByCpDbq9tU3df4ZRxHVR2Rpjkcxww4HBSNcWuBaSCNQQsuq6V
LGpxU0THkmW90ZJ+IiGf3x+qyobsMBlVx4B/806se2RuWEOaeY4FaLcNRDAt7VbIg05QSnmvtO84
yUuM8Sw/omWeN8Z3ZGljuhWZZTKt89BqM1LoIXDC1ufha5N4AkZXK+QnTP1XCR2o5LEylCxyhbxn
mSEgS5UEAhCMoAFy3CkbV05YdHjVpXVlCiUVJYZKbTyiISsdFIY5BuuHJY5wpLX0UdW392QcHKO1
NPLTPLJW7vQ8ism/Tut/AcrsUvmefe025Or9sK0POGUzhTxjoGj9SSoo7cI1cVK+1GgbSbaVpOWs
n3Zx/ibr+IKhzsE4ZnHUr22j2+RDb0wjEvz5ksg7QnBwCsBgA5HvlSTY3Y+67V1Zjt0O7TsIE1TJ
pHH6nmfIar0Bsn2Y7O2SJjp6RtzrAPFNVjeGf4WcAPqVzfrK6OHyzqrTzs5XQ8uMY55+zaXf3Rlb
XNcR42ua8dRje/zXs99upRD3cVNDEwDQRsDQPQAKHbR2CCphkiqKdkjHjBBHEJNeKJv3fuNx0GV7
x5dQpLtlszUWGt4F9LIT3cn6Hz/NRtaUJqyKlHoIWVyrltkIhKhdlZNOz3bKWwzmjrHPfa5neMA+
KI/vt8/z9Va0sAjAudFUtLpo95pjGWzDkegOMfl6edFOez/bL9lPFtu7nvtMrvmGroHfvt/ULG8R
8P3t3U9e69f9mrotZs/p2dC6KS/U9PROrbpOympadu9UOeNMcgBxJJGAOJKqC+9oFRtDthQ1Igkb
a6SUfDUQdk7ufE53V7uZ5cOC4+1a4NmvYoqeqbPTUzW+KKQOjc8t+YY54IGuo4clB2PLHbzSQ4cw
p8P8PhCrfJcy+xzqtVi3EOiJBttVU1bd21FJA+Bj42gtk+YlumTpjOABppopj2ewbKbKbOx7W7b0
jrpUVUr47VamgESBhAfM/Om7vaDOmh0J4QK83uou9Pb4ahkLG0MPcRiJu6C3OckdclcFVU1FWymj
qZ5JY6aPuYWuORGzJdut6DLifcrSrrca1DpgUusU7HNdz0tsl207GbV3CGxbR7I0lspak9zFI8Rz
Q5OgDvA0szwyMj0Vd/0hOzml2Ev9JU2cObZrlvmKJxLu4kbjeYCdS3BBGdeI5Kq6eCSoqIoKdpdN
K9rGNaNS4kAAe5Cvj+ljfGPqdmdm+8EtZQwGpq3A5w9zQ1oPmQHH3C52+XNbe5zncnkhPYl2ft27
2klFe90Vkt7BNWyNO6XA53YweROCSeQB8llc+1esgvcsWzNstFLsxDIWQ2x1BE9k0QOMyOc0uLnA
ZJzplWv2PQssf9G/aa7taGzVMVZMX8DhrCxv0wV5dp27sbR0AC6T3zeeiIfspFs9sWxFvt1ps+2W
ysZj2dvLGONPnIpJXNzug/unBHkQRwIVYUQpjVRfHGcUu99oYAC/H8O8QM+q9J2KmF9/oiVsMw3n
UUFRJGSPlMMzngj2GF5lachdVSbzF9iJLuemdgrbshWdhe1d5sNjNNXRUlVTSzVkgnmLmxZyH4AA
IcDgAfqvM0J3gwlejuxn/wCm/b3+9Wf+WjXm+D+zb6Lmr3pImXRMujs2r7DatjG3/a+oqp7fQzGk
pbbHBGPipsF5AdnecGhwJJwNca4wZdYe37ZK43CO3XvY+G3WqR253/2czWA83s3BgdSM4VPWTZ79
t2KjZVXSsigifK6KHu2PjYXEbxbl4OTujOnJDthi5rZKaqqJqcu3XH4NzXDqAMkFKuWnjKSbwxtV
3zisLKLI7fdhafYl1BtPse8QWqsl7uWmad+Jkjmktc0HI3HAHThnGOOlVUm1tS0AV0ENYAdC9uHM
Gc5Y4Yc0+69A9sFJG7sq2V2TkmmbVGKGXfmjc50YjZgb4aDrk4x5HoqTb2eF0Bcy/wBtEoPySRzR
jHq5o1XCt08li3r8n+6Jj+Ih/wBN8fb7k/sXaZb7laX2y8d3XMeQBHXv3HAcwH41PTOUxbR9mtNX
TNqNl7hFG2UjNHWPEbwT8u4c4cCdBjKhkuxVU1xEd2sUhzjArmtP4gJ3tezO3toe9tLa6t0Z8Ja4
B7HDkRk8OYI9VT5cKXvotSz2Zdvdi23V/oR+3/GbJ7Sd7VCWjraPeLHN4h+CAQefHPsvWuwFVar7
YaW7UMAe9w7szTAOlcW6ZJOTk8fdVTe7Hcdr9hqV17pxS3KIOl7wt1Ba0t+0OeJxzxjPNPX9HS60
kdoms76phrhI9xhz+7oSPbGvklb71qYeY/ei8PHK+fyO40+SnFdHz8fkXOdeKEhK0VFbTU/9tMxh
6E6/RJuSXUjGToSOIaMkgDzTNLexKdy308tQ/wAhgJjv99htjO82gvVFaG8RGXgyn0GrvoFyp7ni
Cyzrb6vBWPb/ALTPtNdFaaYSCZ8RkifjdjiY/LSWfvPPiGeWfpQfDTkr/wBoO1DY+GRzqW21F/qQ
C0TVTWsZjoC7LsewVLbS3SG83R9XT2yhtkRAaKejaWsGOep1PUr0Hh0ZVw2yhj4iGpak87sjShDW
krLDRxJPotIUMULLexwaPdJvnr9FIC+gOV32quloK6nq6c7tRTyNljJ/eacj8lwZcRrp6ozr830C
h8rAJ4PZ+zF7p9obFSXOkwGTty5mdY3/AHmH0KdF5T2C7RbjsgHU9PHDU0EkgkkhlGDnGMtcPlOM
ciNF6b2du1PfrJR3SjDhBVRiRrXcW8iD5gghYOp08qXnsaFdimvic98pONSwf3wPzTKFMXAOaQRk
HiFHbpQOpX95GCYT/wCFY2qo/PH6jlVn5WcHNbYKiWB2YXuHlyWnKMpFNrlF7WeB3hvbwMTRA+bS
uk3KinGJdPJ7VHcrB5KZjqrFw+St1RHyaG1SZJfGPRxC5fhrO06vjd6vKZZnHdXE4nlhWLUJ/lRK
pf8A5MspKkQtISFyjKRKgBEoKRCAMshGVihAC5WMsbJmFsjQ4HqlSqGs8MDzt/SIpmU20lrZFDI1
hpCe8I8LvGfCD5c/UKqoWmWVrGjJJwF6W7e7PX3jZKmFsoX1ctPVCV/djeexm44EgcSMkZx0Xmyl
kdR1sUrmZdDIHFh04HOCtvRSXkKMewncv6mZHqvZAUtBY6Wio4hDHEwDcGmvMnzJUihlzjBUC2av
NLebfHXUEmjtHt5tP7p81JKWs3XAOOiwJ53NS6m0knHMSSMcHBaqunbURFrvY9Fop5w7gcrta7eC
4IK82psMVXTyUtVHvxPGD+hB5ELz/tTYZ7FXuiky+F2THJjRw/n1C9dV1Kyojw4DPI9FX21ezsVd
STU1VDljtcji08iPNN6TVOiXPQ5uojqI47nmxCddorHU2StMFQ0lh8UcgGA8dR/LkmpehjJTW6PQ
w5wcHtl1BITj1SDySPBB1BHMZUnIiAEYWSkBOAwhDlbXY/2R3HauF17uFG42aEF0NO6TunV7xwYH
fdjzxf6geXMpKKyyUm+g1dn0FJsjRR7c7QwiTu3ObZaF+hrKgad4ekbP3uZ4cFArvcqy93isut0m
dPW1UhllkPMnp0A4AcgArq2o7Fe0jaW7vr7iy0DDRHDBFVbsVPE3RsUbd3wtaNMe51Ua207KKrYP
ZGW67U1lP8bUSsp6GkpHl2Xk5c97iOAaDoOZGvWuM4t5zydtPBaPZ9J+0f6KV/podZIKauhcPPV/
5OXl+PVoI5q6v6N+19FQVtz2Tvsoitl8YWRyPOGsmLSwtJ5bzTj1aOqrG67KXi0bVTbNSUNRJdI5
jDFCyMl0wzhrmjm0jBzw1UQW2ckwlzFHobZGZtr/AKI12nmOBNSVrRn/ALSRzG/mF5cj+UK8+22/
U+znZ1s/2aW+oZNW0scb7o6N2Wxub4u7yOZeST5AdVRw0aEUrly9Qn2R6P7F9f6OO3meG9V/+WjX
m6D5G6cl6Y7FKSok/o5baiOGRzpzWGIBpPeAU7B4euoI05heaID9iAD0RX78gl7qLT2EopbjsxG2
kbDNUtfI50DxuucA7i0nQ4yOisDZ+3xMhju22MIp7db5u8ihnaGvqZWtLmsbyOg1Tb2B7G19+2fp
K+N7oaWluEkhfjDpGBoBibnTxHieA9lK9s+znbTam6h80dBTUEbO5ggZVEthjzkjGNScAk8SQsjU
UvznLt/c19Pqc1KDeDhsdzrNqql1+uPhkmcdxrScNaD4QPIKROmkxpI76lOM+yo2asUk9Y+KClgY
I4YYnElzjo0ZPLmmOOoEkYI4Fee1UZb25rGS6Di17Jw7XXR1o2ZuNwEbZzBFvd24kB2XAYJ9150r
L/drjd55oKqrjkqp3PbDDM8AFztGjB4agK9+0qOap2HuVPSxulmm3I2sYMkkvHL2UN2C2HZaKdt7
2lBgc3JjieMlvngcXHotbwy2qjTytmsyzhLuLaiFllihF4RN7Bs61mys9NWVc88T6Vz6mSWRpBDR
vaEjkQSCc6Diq07ELPdrhto272cllPb5O8mfICd9rsjcOOZGcnlxXT2j7bvnpZrRRE07Jvs5mNIz
HHn5XEfedgZHIADmVW0VwrIKWWlp6upipZHbz4mSuaxx4ZLQcEp3QaW50zc3hz+yKdVdFWRS5SPV
+0u2lotYc28bR00DwP8Aq9K7vpfozgfUqurv2zWqlLm2Oxy1j/8Aj3CTdB89xv6lUXkjhj2Rkpir
wmiHMvafxKJayb93gnd/7Vdq7xG+I3F1FTO/3NC0Qtx6jxfioRJM+SQvke573cXOOSfdasoWjCqF
axBYFpTlLqxSdUiELvByHJGccAhKGkkYQADH39fJLv8AJoDR1ASFpBPDKGk5zke5QBkGb3B7SfXC
2sjaOI+q1gbx1last4x8MEeSAM3xN5DCv7+jjeJKmw3O0TOJ+BlEkWeTJM5Hs4H6qgGyNcrR/o8V
Jh21qoAfDUUUgPmWua4fqltZHdS/gW0vE0ei1i8BzSHAFp4go/JGVg4Hhkr7SW5fTeJp1LOnomc+
ElrgQRxBUzyuaqooKkfasG9+8NCk7dGpPMOC+FzXDIpnTKwedE8VFmlbnuHh46O0KbZ6Kqj+aF4H
UDKSlROPVF6nF9zgl1yuMtJzhdtTvNGC0g+YK4PGeCIpl0SzUIQtozAQkCVAAhCEAKhIhBAIQhAC
gkHQqJbY9ntg2qD5a2n+Hrzwq6fDZCf4hwd7/VSxKV1GTg8xeCGk+GUdSdmu0+yFxNVs/WU10pXH
7Snc4wPe30PhyOuVMWSy7rG1VPLSzPbvGOVuHN+mh9lPH8U2Xunhnt0/exhxjYXsPNpHMFF03dzL
r6ltEvLe1dBkoK/un7jz6FSGmqQ4BQNj3OomPcfFgHKe7TNI4DLydAlsD0okubI1+i56ykZURFrv
YrXTuJaNV1tJJ1UNHBWu2OysNzpH09SCDxY8fcPULz/fbTU2a4SUtU3Dm6tcODm8iPJewLnGx1OS
5oJHBVD2oUFLNanvkhY58cjN13MZOuqe0OplXLY+jKdVQr4bu6KLcC3THEc1kXZxv5OmAScrB/zH
1RyC9AYZlug8CgjHFYrOMk5zqgDE8Cn6n232spaWGmo9pbxBTwsEcccdW9rWNAwAADoAExyAAkDo
sFDin1JTwSL+vu2n/wB2Xz/91/8ANNl6v17vohbfLvX3FsJJjFVO6QMJ4kZOnBcCFHlxXYncyUbA
WO07Q19Tb7rWzUU8kf8AssrcFgf/ABDmPQhTe90Pals9s9uw7RVtVbY2brhSzl0kTOmSN/dx0PBV
LRyvhqoZInuZI14LXNOCDletth5X1OzML6hxkdu8XJLWWypxNcr0GdNWrcpnkLBc8ve4ue45JJyS
euVtglkgmjmheWSxuDmPbxaRwIUy7YaClt229TFQwMgjfGyVzGDA3jnJxyUKTlUlOCku4vZDZJxf
Ykce3e2DdxkW095jYDgNZVvaB6AFM1xuNdc6oz3OrmqpwN3vJXbzsZ4ZXKgcV0opPKOcl39jd8uj
9lHW2G7VdPHT1LhGxkpaGtIBwOgySfcp125n21pLY+tsu0d17yAFz4RM5wkZzI8xx9FV/ZfVTRXx
8ccjmscMlo4Er0fSMa+3d45oL8ZyViapuq5vqbFFcZ0J92eZqztE2tr4mxXC8z1cLXB4ZP42564K
3w9od9iYGg0hA6wfyKZdq4IqXai7QU7BHDHVPa1g4NGeCalo/haLEm4IzfOtg3FSJ3S9qV/ppWyR
sot9pyD3R/mtW0HaZf71T91IaalcRh0tPGWyOHQOJO7/AIcHzUJKApho6IvMYIh6i2S5kYtPjBOu
vNKeJWI+ZLzTRSCEIUgCEo4rrqGNik3YwANPX6qMknLunGcadUmAOKQk54pEEGW8OQRlxSNWbgBw
UgYclk3e5AfRKNW6o4IAyyPvsHqFk0M+6fYrWhAGTmA6t0KkfZzeXWTbO01ZGjZxG/zY/wADh9Dn
2Ubas8lsjXN0cCCCFzKKknF9yU8PJ7ccMZHQ4SLCFxdTxOccuLQSfYLJeaNIEIQUACxdosli9AM0
PaHHUA+ywexo4Nb9Ft5pHKSD/9k=

 拿到Base64串设置对应的格式就可以转化为对应的图像了:

http://imgbase64.duoshitong.com/

 :

 根据Base64Code生成的图片如下图所示:

 注:一般跨系统调用图片或者需要保存图片数据可以采用Base64的方式来实现。

猜你喜欢

转载自blog.csdn.net/boonya/article/details/81201682