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A General Gray Code Quantized Method of Binary Feature Descriptors for Fast and Efficient Keypoint Matching

机译:快速有效的关键点匹配二值特征描述符的通用格雷码量化方法

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In this paper, a general Gray code quantized method of binary feature descriptors is proposed for fast and efficient keypoint matching on 3D point clouds. In our method, it includes 2 variable L and N. L is rule variable which can be used to set the encoding group length according to the feature of the real-valued descriptor, and N is bits variable which can be used to set the number of Gray code bits according to the actual system requirements. Be different from the exist method, such as B-SHOT, our proposed method has the advantages of reasonable and flexible. As an example, our method is applied on the feature descriptor SHOT and tested in a standard benchmark dataset, different variable combinations of L and N are tested in the Gray code quantized processes, the best combination of L and N is dubbed as GRAY-SHOT through performance comparison. At last, GRAY-SHOT is compared with the state-of-the-art binary 3D feature descriptor B-SHOT, experimental evaluation result shows that GRAY-SHOT offers better keypoint matching performances to B-SHOT on a standard benchmark dataset with a slight more memory footprint and time consumption.
机译:本文提出了一种通用的二进制特征描述符格雷码量化方法,用于3D点云上快速高效的关键点匹配。在我们的方法中,它包含2个变量L和N。L是规则变量,可用于根据实值描述符的特征设置编码组长度,而N是位变量,可用于设置数字格雷码位根据实际系统要求。与现有的B-SHOT方法不同,本文提出的方法具有合理,灵活的优点。例如,我们的方法应用于特征描述符SHOT并在标准基准数据集中进行了测试,L和N的不同变量组合在格雷码量化过程中进行了测试,L和N的最佳组合被称为GREY-SHOT通过性能比较。最后,将GRAY-SHOT与最新的二进制3D特征描述符B-SHOT进行了比较,实验评估结果表明,GRAY-SHOT在标准基准数据集上提供了更好的与B-SHOT的关键点匹配性能,并且略有改进。更多的内存占用空间和时间消耗。

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