回复审稿人意见

Thank you for your Suggestions. All your Suggestions are very important. They are of great guiding significance to my further thesis writing and scientific research.

结尾

Thanks again for your advice and I hope I can learn more from you.

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Thank you for your patience reading the manuscript and I’m very appreciate with your kind suggestions. Below is my response:

Comment #1: 语言不流畅

回复:We are very sorry for the mistakes in this manuscript and inconvenience they caused in your reading. The manuscript has been thoroughly revised and edited by a native English speaker, so we hope it can meet the journal’s standard. Thanks so much for your useful comments.

We regret there were problems with the English. The paper has been carefully revised by a professional language editing service to improve the grammar and readability.

Grammar and word usage were improved throughout the paper. I have used Grammarly plug-in and ask help from colleagues reviewing my manuscript for clarity, and corrected by a colleague whose native language is English.

Thanks for pointing out those issues, we revised the grammar and word usage carefully throughout the manuscript under the help of kind colleagues.

Comment #2: 创新性

Thank you for this valuable feedback. Our research [is the first to show that…]/[confirms the findings of White et al. in a younger age group…]/[improves the yield of…]. We have added a sentence to the Abstract (page 2 line 5, and paragraph to the Discussion section (page 15 starting line 8), to clarify this.
非常感谢您富有建设性的反馈。我们的研究“是第一个表明”、“验证了在更年轻人群中怀特等人的发现…”、”提高了…”。我们已经在摘要部分增加了一句话加以说明“第二页第五行”,并且在讨论部分(第15页第8行)也加以澄清。

Point 7: Regarding the references cited in Section 1, it would be nice to include recent learning-based pose estimation techniques such as PointNet, PointNet++, DeepIM, DenseFusion, etc. Besides that, 3 out of 4 types of objects used for testing in the submitted work can be considered as planar objects. Therefore, it might be worth to include the previous works on random bin-picking for planar objects in the prior art section.

Response 7: We really appreciate your suggestions, related papers are added and those start-of-the-art methods are also useful for me in further research. The added references are [34][35][39][40][41].



作者:海宝编辑
链接:https://zhuanlan.zhihu.com/p/38593362
来源:知乎
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