论文标题
深度学习的人重新识别
Deep Learning based Person Re-identification
论文作者
论文摘要
在多摄像机监视设置中自动化的人重新识别对于有效跟踪和监视人群运动非常重要。近年来,很少开发基于深度学习的重新识别方法,这些方法非常准确但耗时,因此对于实际目的而言并不是很合适。在本文中,我们提出了一种有效的层次重新识别方法,在该方法中,首先采用了基于颜色直方图的比较来查找图库集中最接近的匹配项,并使用暹罗网络进行了下一个基于深度功能的比较。在第一级匹配之后的搜索空间的降低有助于实现快速响应时间,并通过消除极大的元素来提高暹罗网络的预测准确性。在每个层次结构级别中都采用了基于轮廓部分的特征提取方案,以保留不同人体结构的相对位置,并使外观描述符本质上更加歧视。提出的方法已在五个公共数据集上进行了评估,也是我们的团队在实验室捕获的新数据集。结果表明,就整体准确性而言,它的表现优于大多数最先进的方法。
Automated person re-identification in a multi-camera surveillance setup is very important for effective tracking and monitoring crowd movement. In the recent years, few deep learning based re-identification approaches have been developed which are quite accurate but time-intensive, and hence not very suitable for practical purposes. In this paper, we propose an efficient hierarchical re-identification approach in which color histogram based comparison is first employed to find the closest matches in the gallery set, and next deep feature based comparison is carried out using Siamese network. Reduction in search space after the first level of matching helps in achieving a fast response time as well as improving the accuracy of prediction by the Siamese network by eliminating vastly dissimilar elements. A silhouette part-based feature extraction scheme is adopted in each level of hierarchy to preserve the relative locations of the different body structures and make the appearance descriptors more discriminating in nature. The proposed approach has been evaluated on five public data sets and also a new data set captured by our team in our laboratory. Results reveal that it outperforms most state-of-the-art approaches in terms of overall accuracy.