On the Effect of Data Imbalance for Multi-Label Pedestrian Attribute Recognition

T. Wang, Kai-Chen Shu, Chia-Hao Chang, Yi-Fu Chen
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引用次数: 2

Abstract

Pedestrian attribute recognition has many applications in surveillance and attribute based query, tracking, and person re-identification. The recent trend in deep-learning based pedestrian attribute recognition is to use a shared CNN backbone for feature extraction and multiple subsequent branches for the individual branches. While this allows the end-to-end learning to simultaneously recognize multiple attributes, the data imbalance problem of most attributes becomes a challenge that has not been studied sufficiently for this application. This paper presents studies on how the cost adjustment method affects several common evaluation metrics. We also propose a two-stage training procedure, where an additional fine-tuning stage on the classifier layers only with class-balanced data is shown to improve recognition performances.
数据不平衡对多标签行人属性识别的影响
行人属性识别在监控和基于属性的查询、跟踪、人员再识别等方面有着广泛的应用。基于深度学习的行人属性识别的最新趋势是使用共享的CNN主干进行特征提取,使用多个后续分支进行单个分支。虽然这允许端到端学习同时识别多个属性,但大多数属性的数据不平衡问题成为该应用程序尚未充分研究的挑战。本文研究了成本调整方法对几种常用评价指标的影响。我们还提出了一个两阶段的训练过程,其中仅在类平衡数据的分类器层上进行额外的微调阶段可以提高识别性能。
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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