c++版本的opencv函数

C++版本的好处:


1、在于可以尽量避免使用指针这种危险的东西;


2、不用费心去release资源了,因为在其destructor里面,系统会自动帮你搞定。


3、在某些情况下会比C版本运行速度快。


在文件中包含 using namespace cv;


 






1.    Imread(CvLoadImage):loads an image from a file;


2.        imshow(cvShowImage):displays an image in the specifiedwidow;


3.        waitKey(cvWaitKey):waits for a pressed key;


4.        cvtColor(cvCvtColor):converts an image from one colorspace to another;


5.        reduce(cvReduce):reduces a matrix to a vector;


6.        minMaxLoc(cvMinMaxLoc):finds the global minimum andmaximum in a whole array or sub-array;


7.        namedWindow(cvNamedWindow):creates a window;


8.        destroyWindow(cvDestroyWindow):destroys a window;


9.        destroyAllWindows(cvDestroyAllWindows):destroys all of the HighGUIwindows;


10.    imwrite(cvSaveImage):saves an image to a specified file;


11.    resize(cvResize):resizes an image;


12.    pyrDown(cvPyrDown):blurs an image and downsamples it;


13.    pyrUp(cvPyrUp):upsamples an image and then blursit;


14.    threshold(cvThreshold):applies a fixed-level threshold toeach array element;


15.    adaptiveThreshold(cvAdaptiveThreshold):applies an adaptive threshold toan array;


16.    VideoCapthure::open(cvCaptureFromFile):open video file or a capturingdevice for video capturing;


17.    VideoCapture::isOpened:returns true if video capturinghas been initialized already;


18.    VideoCapture::release(cvReleaseCapture):closes video file or capturingdevice;


19.    VideoCapture::grab(cvGrabFrame):grabs the next frame from videofile or capturing device;


20.    VideoCaputre::retrieve(cvRetrieveFrame):decodes and returns the grabbedvideo frame;


21.    VideoCapture::read(cvQueryFrame):grabs,decodes and returns the nextvideo frame;


22.    VideoCapture::get(cvGetCaptureProperty):returns the specified VideoCaptureproperty;


23.    VideoCapture::set(cvSetCaptureProperty):sets a property in theVideoCapture;


24.    VideoWriter::open:initializes or reinitializes videowriter;


25.    VideoWriter::isOpened:returns true if video writer hasbeen successfully initialized;


26.    VideoWriter::write:writes the next video frame;


27.    Mat::row:creates a matrix header for thespecified matrix row;


28.    Mat::col:creates a matrix header for thespecified matrix column;


29.    Mat::rowRange:creates a matrix header for thespecified row span;


30.    Mat::colRange:creates a matrix header for thespecified col span;


31.    Mat::diag:extracts a diagonal from a matrix,or creates a diagonal matrix;


32.    Mat::clone:creates a full copy of the arrayand the underlying data;


33.    Mat::copyTo(cvCopy):copies the matrix to another one;


34.    Mat::convertTo(cvConvertScale):converts an array to anotherdatatype with optional scaling;


35.    Mat::assignTo:provides a functional form ofconvertTo;


36.    Mat::setTo:sets all or some of the arrayelements to the specified value;


37.    Mat::reshape:changes the shape and/or thenumber of channels of a 2D matrix without copying the data;


38.    Mat::t:transposes a matrix;


39.    Mat::inv:inverses a matrix;


40.    Mat::mul:performs an element-wisemultiplication or division of the two matrices;


41.    Mat::cross:computes a cross-product of two3-element vectors;


42.    Mat::dot:computes a dot-product of twovectors;


43.    Mat::zeros:returns a zero array of thespecified size and type;


44.    Mat::ones:returns an array of all 1’s of thespecified size and type;


45.    Mat::eye:returns an identity matrix of thespecified size and type;


46.    Mat::create:allocates new array data if needed;


47.    Mat::addref:increments the reference counter;


48.    Mat::release:decrements the reference counterand deallocates the matrix if needed;


49.    Mat::resize:changes the number of matrix rows;


50.    Mat::reserve:reserves space for the certainnumber of rows;


51.    Mat::push_back:adds elements to the bottom of thematrix;


52.    Mat::pop_back:removes elements from the bottomof the matrix;


53.    Mat::locateROI:locates the matrix header within aparent matrix;


54.    Mat::adjustROI:adjusts a submatrix size andposition within the parent matrix;


55.    Mat::operator:extracts a rectangular submatrix;


56.    Mat::operatorCvMat:creates the CvMat header for thematrix;


57.    Mat::operatorIplImage:creates the IplImage header forthe matrix;


58.    Mat::total:returns the total number fo arrayelements;


59.    Mat::isContinuous:reports whether the matrix iscontinuous or not;


60.    Mat::elemSize:returns the matrix element size inbytes;


61.    Mat::elemSize1:returns the size of each matrixelement channel in bytes;


62.    Mat::type:returns the type of a matrixelement;


63.    Mat::depth:returns the depth of a matrixelement;


64.    Mat::channels:returns the number of matrix channels;


65.    Mat::step1:returns a normalized step;


66.    Mat::size:returns a matrix size;


67.    Mat::empty:returns true if the array has noelemens;


68.    Mat::ptr:returns a pointer to the specifiedmatrix row;


69.    Mat::at:returns a reference to thespecified array element;


70.    Mat::begin:returns the matrix iterator andsets it to the first matrix element;


71.    Mat::end:returns the matrix iterator andsets it to the after-last matrix element;


72.    calcHist(cvCalcHist):calculates a histogram of a set ofarrays;


73.    compareHist(cvCompareHist):compares two histograms;


74.    equalizeHist(cvEqualizeHist):equalizes the histogram of agrayscale image(直方图均衡化);


75.    normalize:normalizes the norm or value rangeof an array;


76.    CascadeClassifier::CascadeClassifier:loads a classifier from a file;


77.    CascadeClassifier::empth:checks whether the classifier hasbeen loaded;


78.    CascadeClassifier::load(cvLoadHaarClassifierCascade):loads a classifier from a file;


79.    CascadeClassifier::read:reads a classifier from aFileStorage node;


80.    CascadeClassifier::delectMultiScale(cvHaarDetectObjects):detects objects of different sizesin the input image(检测图像中的目标);


81.    CascadeClassifier::setImage(cvSetImagesForHaarClassifierCascade):sets an image for detection(隐藏的cascade(hidden cascade)指定图像);


82.    CascadeClassifier::runAt(cvRunHaarClassifierCascade):runs the detector at the specifiedpoint(在给定位置的图像中运行cascade of boosted classifier);


83.    groupRectangles:groups the object candidaterectangles;


84.    split(cvSplit):divides a multi-channel array intoseveral single-channel arrays;


85.    merge(cvMerge):creates one multichannel array outof several single-channel ones;


86.    mixChannels(cvMixChannels):copies specified channels frominput arrays to the specified channels of output arrays;


87.    setMouseCallback(cvSetMouseCallback):sets mouse handler for thespecified window;


88.    bilateralFilter:applies the bilateral filter to animage(双边滤波);


89.    blur(cvSmooth):blurs an image using thenormalized box filter(均值模糊);


90.    medianBlur:blurs an image using the medianfilter(中值模糊);


91.    boxFilter:blurs an image using the boxfilter;


92.    GaussianBlur:blurs an image using a Gaussianfilter(高斯模糊);


93.    getGaussianKernel:returns Gaussian filtercoefficients;


94.    sepFilter2D:applies a separable linear filterto an image;


95.    filter2D(cvFilter2D):convolves an image with the kernel;


96.    norm(cvNorm):calculates an absolute array norm,an absolute difference norm, or a relative defference norm;


97.    flip(cvFlip):filps a 2D array around vertical,horizontal, or both axes;


98.    Algorithm::get:returns the algorithm parameter;


99.    Algorithm::set:set the algorithm parameter;


100. Algorithm::write:stores algorithm parameters in afile storage;


101. Algorithm::read:reads algorithm parameters from afile storage;


102. Algorithm::getList:returns the list of registeredalgorithms;


103. Algorithm::create:creates algorithm instance by name;


104. FaceRecognizer::train:trains a FaceRecognizer with givendata and associated labels;


105. FaceRecognizer::update:updates a FaceRecognizer withgiven data and associated labels;


106. FaceRecognizer::predict:predicts a label and associatedconfidence(e.g. distance) for a given input image;


107. FaceRecognizer::save:saves a FaceRecognizer and itsmodel state;


108. FaceRecognizer::load:loads a FaceRecognizer and itsmodel state;


109. createEigenFaceRecognizer:;


110. createFisherFaceRecognizer:;


111. createBPHFaceRecognizer:;


112. getTextSize(cvGetTextSize):calculates the width and height ofa textstring;


113. putText(cvPutText):draws a text string;


114. getStructuringElement(cvCreateStructingElementEx):returns a structuring element ofthe specified size and shape for morphological operations;


115. morphologyEx(cvMorphologyEx):performs advanced morphologicaltransformations;


116. findContours(cvFindContours):finds contours in a binary image;


117. drawContours(cvDrawContours):draw contours outlines or filledcontours;


118. minAreaRect(cvMinAreaRect2):finds a rotated rectangle of theminimum area enclosing the input 2D point set;


119. floodFill(cvFloodFill):fills a connected component withthe given color;


120. getRectSubPix(cvGetRectSubPix):retrieves a pixel rectangle froman image with sub-pixel accuracy;


121. CvSVM::CvSVM:default and training constructors;


122. CvSVM::train:trains an SVM;


123. CvSVM::train_auto:trains an SVM with optimalparameters;


124. CvSVM::predict:predicts the response for inputsample(s);


125. CvSVM::get_default_grid:generates a grid for SVMparameters;


126. CvSVM::get_params:returns the current SVM parameters;


127. CvSVM::get_support_vector:retrieves a number of supportvectors and the particular vector;


128. CvSVM::get_var_count:returns thenumber of used features(variables count);


129. CvANN_MLP(multi-layerperceptrons)::CvANN_MLP:the constructors;


130. CvANN_MLP::create:constructs MLP with the specifiedtopology;


131. CvANN_MLP::train:trains/updates MLP;


132. CvANN_MLP::predict:predicts responses for inputsamples;


133. CvANN_MLP::get_layer_count:returns the number fo layers inthe MLP;


134. CvANN_MLP::get_layer_size:returns numbers of neurons in eachlayer of the MLP;


135. CvANN_MLP::get_weights:returns neurons weights of theparticular layer;


136. CvKNearest::CvKNearest:default and training constructors;


137. CvKNearest::train:trains the model;


138. CvKNearest::find_nearest:finds the neighbors and predictsresponses for input vectors;


139. CvKNearest::get_max_k:returns the number of maximumneighbors that may be passed to the method CvKNearest::find_nearest();


140. CvKNearest::get_var_count:returns the number of usedfeatures(variables count);


141. CvKNearest::get_sample_count:returns the total number of trainsamples;


142. CvKNearest::is_regression:returns type of the problem(truefor regression and false for classification);


143. HoughLines(cvHoughLines):finds lines in a binary imageusing the standard Hough transform;


144. HoughLinesP:finds line segments in a binaryimage using the probabilistic Hough transform;


145. HoughCircles(cvHoughCircles):finds circles in a grayscale imageusing the Hough transform;


146. line(cvLine):draws a line segment connectingtwo points;


147. fitLine(cvFitLine):fits a line to a 2D or 3D pointset;


148. fitEllipse(cvFitEllipse2):fits an ellipse around a set of 2Dpoints;


149. ellipse(cvEllipse、cvEllipseBox):draws a simple or thick ellipticarc or fills an ellipse sector;


150. boundingRect(cvBoundingRect):calculatesthe up-right bounding rectangle of a point set;


151. rectangle(cvRectangle):draws a simple, thick, or filledup-right rectangle;


152. minEnclosingCircle(cvMinEnclosingCircle):finds acircle of the minimum area enclosing a 2D point set;


153. circle(cvCircle):draw a circle;


154. fillPoly:fills the area bounded by one ormore polygons;


155. approxPolyDP(cvApproxPoly):approximates a polygonal curve(s)with the specified precision;


156. pointPolygonTest(cvPointPolygonTest):performs a point-in-contour test(判断点在多边形中的位置);


157. convexHull(cvConvexHull2):finds the convex hull of a pointset;


158. transpose(cvTranspose):transposes a matrix;


159. invert(cvInvert):finds the inverse orpseudo-inverse of a matrix;


160. getStructuringElement(cvCreateStructuringElementEx):returns a structuring element ofthe specified size and shape for morphological operations;


161. absdiff(cvAbsDiff):calculates the per-elementabsolute difference between two arrays or between an array and a scalar;


162. subtract(cvSub):calculates the per-elementdifference between two arrays or array and a scalar;


163. multiply(cvMul):calculates the per-element scaledproduct fo two arrays;


164. divide(cvDiv):performs per-element division oftwo arrays or a scalar by an array;


165. bitwise_or(cvOr):calculates the per-elementbit-wise disjunction of two arrays or an array and a scalar;


166. bitwise_and(cvAnd):calculates the per-elementbit-wise conjunction of two arrays or an array and a scalar;


167. bitwise_not(cvNot):inverts every bit of an array;


168. bitwise_xor(cvXor):calculates the per-elementbit-wise “exclusive of” operation on two arrays or an array and a scalar;


169. erode(cvErode):erodes an image by using a specificstructuring element;


170. dilate(cvDilate):dilates an image by using aspecific structuring element;


171. min(cvMin):calculates per-element minimum oftwo arrays or an array and a scalar;


172. max(cvMax):calculates per-element maximum oftwo arrays or an array and a scalar;


173. add(cvAdd):calculates the per-element sum oftwo arrays or an array and a scalar;


174. addWeighted(cvAddWeighted):calculates the weighted sum of twoarrays;


175. scaleAdd(cvScaleAdd):calculats the sum of a scaledarray and another array;


176. saturate_cast():template function for accurateconversion from one primitive type to another;


177. sqrt(cvSqrt):calculates a square root of arrayelements;


178. pow(cvPow):raises every array element to apower;


179. abs:calculates an absolute value ofeach matrix element;


180. convertScaleAbs(cvConvertScaleAbs):scales, calculates absolutevalues, and converts the result to 8-bit;


181. cuberoot(cvCbrt):computes the cube root of anargument;


182. exp(cvExp):calculates the exponent of everyarray element;


183. log(cvLog):calculates the natural logarithmof every array element;


184. Canny(cvCanny):finds edges in an image using theCanny algorithm;


185. Sobel(cvSobel):calculates the first, second,third, or mixed image derivatives using an extended Sobel operator;


186. Scharr:Calculates the first x – or y –image derivative using Scharr operator(Scharr 滤波器);


187. Laplacian(cvLaplace):calculates the Laplacian of animage;


188. getDerivKernels:returns filter coefficients forcomputing spatial image derivatives;


189. contourArea(cvContourArea):calculates a contour area;


190. LUT(cvLUT):performs a look-up table transformof an array;


191. calcBackProject(cvCalcBackProject):calculates the back projection ofa histogram(反向投影);


192. arcLength(cvArcLength):calculates a contour perimeter ora curve length;


193. meanShift(cvMeanShift):finds an object on a backprojection image;


194. CamShift(cvCamShift):finds an object center, size, andorientation;


195. TermCriteria:template class definingtermination criteria for iterative algorithms;


196. createTrackbar(cvCreateTrackbar):creates a trackbar and attaches itto the specified window;


197. watershed(cvWatershed):performs a marker-based imagesegmentation using the watershed algorithm;


198. grabCut:runs the GrabCut algorithm;


199. compare(cvCmp):performs the per-elementcomparison of two arrays or an array and scalar value;


200. mean(cvAvg):calculates an average(mean) ofarray elements;


201. meanStdDev(cvAvgSdv):calculates a mean and standarddeviation of array elements;


202. cartToPolar(cvCartToPolar):calculates the magnitude and angleof 2D vectors;


203. moments(cvMoments):calculates all of the moments upto the third order of a polygon or rasterized shape;


204. matchShapes(cvMatchShapes):compares two shapes;


205. cornerHarris(cvCornerHarris):Harris edge detector;


206. goodFeaturesToTrack(cvGoodFeaturesToTrack):determines strong corners on an image;


207. classFeatureDetector:abstract base class for 2D imagefeature detectors;


208. classFastFeatureDetector:wrapping class for featuredetection using the FAST() method;


209. classSURF(SurfFeatureDetector、SurfDescriptorExtractor):extracting Speeded Up Robust Featuresfrom an image;


210. classSIFT(SiftFeatureDetector):extracting keypoints and computingdescriptors using the Scale Invariant Feature Transform(SIFT) algorithm;


211. SURF::operator(cvExtractSURF):detects keypoints and computesSURF descriptors for them;


212. drawKeypoints:draw keypoints;


213. drawMatches:draws the found matches ofkeypoints from two images;


214. classDescriptorMatcher:abstract base class for matchingkeypoint descriptors. It has two groups of match methods,for matchingdescriptors of an image with another image or with an image set;


215. findChessboardCorners(cvFindChessboardCorners):finds the positions of internalcorners of the chessboard;


216. drawChessboardCorners(cvDrawChessboardCorners):renders the detected chessboardcorners;


217. calibrateCamera(cvCalibrateCamera2):finds the camera intrinsic andextrinsic parameters from several view of a calibration pattern;


218. initUndistortRectifyMap(cvInitUndistortMap、cvInitUndistortRectifyMap):computes the undistortion andrectification transformation map;


219. remap(cvRemap):applies a generic geometricaltransformation to an image;


220. calibrationMatrixValues:computes useful cameracharacteristics from the camera matrix;


221. findFundamentalMat(cvFindFundamentalMat):calculates a fundamental matrixfrom the corresponding points in two images;


222. computeCorrespondEpilines(cvComputeCorrespondEpilines):for points in an image of a stereopair, computes the corresponding epilines in the other image;


223. findHomography(cvFindHomography):finds a perspective transformationbetween two planes;


224. warpPerspective(cvWarpPerspective):applies a perspectivetransformation to an image;


225. getPerspectiveTransform(cvGetPerspectiveTransform):calculates a perspective transformfrom four pairs of the corresponding points;


226. cornerSubPix(cvFindCornerSubPix):refines the corner locations;


227. calcOpticalFlowPyrLK(cvCalcOpticalFlowPyrLK):calculates an optical flow for asparse feature set using the iterative Lucas-Kanade method with pyramids;


228. swap:swaps two matrices;


229. accumulateWeighted(cvRunningAvg):updates a running average;


230. classBackgroundSubtractorMOG:gaussian mixture-basedbackground/foreground segmentation algorithm;


231. randu:generates a singleuniformly-distributed(均匀分布) random number or an array ofrandom numbers;


232. randn:fills the array with normallydistributed(正态分布) random numbers;


233. getTickCount:returns the number of ticks;


234. getTickFrequency:returns the number of ticks persecond(使用getTickCount和getTickFrequency两个函数可以计算执行某个算法所用时间);


235. CV_Assert:checks a condition at runtime andthrows exception if it fails;


236. saturate_cast:template function for accurateconversion from one primitive type to another;


237. classRNG:random number generator;


238. RNG::next:returns the next random number;


239. RNG::operatorT:returns the next random number ofthe specified type;


240. RNG::operator():returns the next random number;


241. RNG::uniform:returns the next random numbersampled from the uniform distribution;


242. RNG::gaussian:returns the next random numbersampled from the Gaussian distribution;


243. RNG::fill:fills arrays with random numbers;


244. getOptimalDFTSize(cvGetOptimalDFTSize):returns the optimal DFT size for agiven vector size;


245. copyMakeBorder(cvCopyMakeBorder):forms a border around an image;


246. dft(cvDFT):performs a forward or inverseDiscrete Fourier transform of a 1D or 2D floating-point array;


247. magnitude:calculates the magnitude(幅度) of 2D vectors;


248. classFileStorage:XML/YAML file storage class thanencapsulates all the information necessary for writing or reading data to/froma file;


249. FileStorage::open:open a file;


250. FileStorage::isOpened:checks whether the file is opened;


251. FileStorage::release:closes the file and releases allthe memory buffers;


252. FileStorage::releaseAndGetString:closes the file and releases allthe memory buffers;


253. FileStorage::getFirstTopLevelNode:returns the first element of thetop-level mapping;


254. FileStorage::root:returns the top-level mapping;


255. FileStorage::operator[]:returns the specified element ofthe top-level mapping;


256. FileStorage::operator*:returns the obsolete C FileStorage structure;


257. FileStorage::writeRaw:writes multiple numbers;


258. FileStorage::writeObj:writes the registered C structure(CvMat、CvMatND、CvSeq);


259. FileStorage::getDefaultObjectName:returns the normalized object name for thespecified name of a file;


260. getAffineTransform(cvGetAffineTransform):calculates an affine transformfrom three pairs of the corresponding points;


261. getRotationMatrix2D(cv2DRotationmatrix):calculates an affine matrix of 2Drotation;


262. warpAffine(cvWarpAffine):applies an affine transformationto an image;


263. matchTemplate(cvMatchTemplate):compares a template against overlapped imageregions;

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转载自blog.csdn.net/zz420521/article/details/64919927