将 medoids 包装成球体图像描述符

O. Gorokhovatskyi, Olena Yakovleva
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摘要

研究目的本文介绍了在图像分类问题中使用从 ORB 描述符集获得的匹配 Medoids 代替二进制描述符全集匹配的可行性研究。研究成果。我们提出了不同的方法,包括直接蛮力中值匹配法、为不同类别分组中值法,以及先分组描述符再计算其中的中值法。对所有这些方法都进行了数值实验,以比较分类准确性和推理时间。结果表明,使用中值可以重新分配处理时间,在预处理期间而不是分类期间执行更多计算。根据在利兹 Butterly 数据集上进行的建模,基于中间值的图像匹配精度与描述符匹配精度相同(不同特征数量下为 0.69-0.88)。在预处理阶段,中间值的计算需要额外的时间,但分类时间却变得更快:在我们的实验中,对于精度相当的模型,分类速度提高了约 9-10 倍,而预处理时间却增加了 9-10 倍。最后,我们将所提想法的效率与在相同数据上训练和评估过的 CNN 进行了比较。不出所料,CNN 需要更多的预处理(训练)时间,但结果是值得的:这种方法提供了最佳的分类准确性和推理时间。结论中值匹配的准确率与直接描述符匹配的准确率相同,但使用中值可以重新分配整体建模时间,增加预处理时间,加快推理速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MEDOIDS AS A PACKING OF ORB IMAGE DESCRIPTORS
The aim of the research. The paper presents the research about the feasibility to use matching medoids obtained from the set of ORB descriptors instead matching the full set of binary descriptors for image classification problem. Research results. Different methods that include direct brute force medoids matching, grouping of medoids for separate classes, and grouping of descriptors followed by calculation of medoids amongst them were proposed. Numerical experiments were performed for all these methods in order to compare the classification accuracy and inference time. It has been shown that using of medoids allowed us to redistribute processing time in order to perform more calculations during preprocessing rather than during classification. According to modelling performed on the Leeds Butterly dataset matching images based on medoids could have the same accuracy as matching of descriptors (0.69–0.88 for different number of features). Medoids require additional time for the calculation during preprocessing stage but classification time becomes faster: in our experiments we have obtained about 9–10 times faster classification and same 9–10 times increasing preprocessing time for the models that have comparable accuracies. Finally, the efficiency of the proposed ideas was compared to the CNN trained and evaluated on the same data. As expected, CNN required much more preprocessing (training) time but the result is worth it: this approach provides the best classification accuracy and inference time. Conclusion. Medoids matching could have the same accuracy as direct descriptors matching, but the usage of medoids allows us to redistribute the overall modeling time with the increasing preprocessing time and making inference faster.
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