Selective Weakly Supervised Human Detection under Arbitrary Poses
发布时间:2020-01-13 点击次数:
- 所属单位:计算机科学与技术学院/人工智能学院/软件学院
- 发表刊物:PATTERN RECOGNITION
- 关键字:Weakly supervised learning Human detection Selective Weakly Supervised Detection (SWSD) Multi-instance learning (MIL)
- 摘要:In this paper we study the problem of weakly supervised human detection under arbitrary poses within the framework of multi-]instance learning (MIL). Our contributions are threefold: (1) we first show that in the context of weakly supervised learning, some commonly used bagging tools in MIL such as the Noisy-]OR model or the ISR model tend to suffer from the problem of gradient magnitude reduction when the initial instance level detector is weak and/or when there exist large number of negative proposals, resulting in extremely inefficient use of training examples. We hence advocate the use of more robust and simple max-]pooling rule or average rule under such circumstances; (2) we propose a new Selective Weakly Supervised Detection (SWSD) algorithm, which is shown to outperform several previous state-of-the-art weakly supervised methods; (3) finally, we identify several crucial factors that may significantly influence the performance, such as the usefulness of a small amount of supervision information, the need of relatively higher RoP (Ratio of Positive Instances), and so on these factors are shown to benefit the MIL-]based weakly supervised detector but are less studied in the previous literature. We also annotate a new large-scale data set called LSP/MPII-MPHB (Multiple Poses Human Body), in which and another popular benchmark dataset we demonstrate the superiority of the proposed method compared to several previous state-of-the-art methods.
- ISSN号:0031-3203
- 是否译文:否
- 发表时间:2017-05-01
- 合写作者:Cai, Yawei,Tan, Xiaosong
- 第一作者:谭晓阳
- 通讯作者:谭晓阳