Performance Evaluation of the Covariance Descriptor for Target Detection

Pedro Cortez Cargill, Cristobal Undurraga Rius, D. Mery, Á. Soto
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引用次数: 16

Abstract

In computer vision, there has been a strong advance in creating new image descriptors. A descriptor that has recently appeared is the Covariance Descriptor, but there have not been any studies about the different methodologies for its construction. To address this problem we have conducted an analysis on the contribution of diverse features of an image to the descriptor and therefore their contribution to the detection of varied targets, in our case: faces and pedestrians. That is why we have defined a methodology to determinate the performance of the covariance matrix created from different characteristics. Now we are able to determinate the best set of features for face and people detection, for each problem. We have also achieved to establish that not any kind of combination of features can be used because it might not exist a correlation between them. Finally, when an analysis is performed with the best set of features, for the face detection problem we reach a performance of 99%, meanwhile for the pedestrian detection problem we reach a performance of 85%. With this we hope we have built a more solid base when choosing features for this descriptor, allowing to move forward to other topics such as object recognition or tracking.
目标检测的协方差描述符性能评价
在计算机视觉领域,在创建新的图像描述符方面有了很大的进步。协方差描述符(Covariance descriptor)是近年来出现的一种描述符,但关于协方差描述符的不同构造方法还没有任何研究。为了解决这个问题,我们对图像的不同特征对描述符的贡献进行了分析,从而分析了它们对检测不同目标的贡献,在我们的例子中是人脸和行人。这就是为什么我们定义了一种方法来确定由不同特征创建的协方差矩阵的性能。现在我们能够为每个问题确定人脸和人物检测的最佳特征集。我们还建立了不能使用任何类型的特征组合,因为它们之间可能不存在相关性。最后,当使用最佳特征集进行分析时,对于人脸检测问题,我们达到了99%的性能,同时对于行人检测问题,我们达到了85%的性能。有了这些,我们希望在为这个描述符选择特征时,我们已经建立了一个更坚实的基础,从而可以继续讨论其他主题,如物体识别或跟踪。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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