人再识别的深度强化学习注意选择

Xu Lan, Hangxiao Wang, S. Gong, Xiatian Zhu
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引用次数: 53

摘要

现有的人物再识别(re-id)方法假设提供精确裁剪的人物边界框,背景噪声最小,主要是手动裁剪。在实践中,当必须在处理大量图像和/或视频的情况下自动检测人员边界框时,这一点就被严重破坏了。与手动裁剪相比,自动检测的边界框在随机数量的背景杂波下的准确性要低得多,这会显著降低人员重新识别匹配的准确性。在这项工作中,我们开发了一个联合学习深度模型,该模型通过强化学习背景杂波最小化来优化任何自动检测的人员边界框内的人员重新识别注意力选择,该背景杂波最小化受重新识别标签配对约束。具体来说,我们制定了一种新的统一的重新识别架构,称为身份判别注意强化学习(IDEAL),以准确地在自动检测的边界框中选择重新识别注意力,以优化重新识别性能。我们的模型可以提高重新识别的准确性,与人类手工裁剪边界框的方法相当,并具有身份判别性注意选择的额外优势,特别有利于超越人类知识的重新识别任务。广泛的比较评估表明,在两个自动检测的再识别基准CUHK03和Market-1501上,拟议的IDEAL模型比众多最先进的再识别方法具有优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Reinforcement Learning Attention Selection For Person Re-Identification
Existing person re-identification (re-id) methods assume the provision of accurately cropped person bounding boxes with minimum background noise, mostly by manually cropping. This is significantly breached in practice when person bounding boxes must be detected automatically given a very large number of images and/or videos processed. Compared to carefully cropped manually, auto-detected bounding boxes are far less accurate with random amount of background clutter which can degrade notably person re-id matching accuracy. In this work, we develop a joint learning deep model that optimises person re-id attention selection within any auto-detected person bounding boxes by reinforcement learning of background clutter minimisation subject to re-id label pairwise constraints. Specifically, we formulate a novel unified re-id architecture called Identity DiscriminativE Attention reinforcement Learning (IDEAL) to accurately select re-id attention in auto-detected bounding boxes for optimising re-id performance. Our model can improve re-id accuracy comparable to that from exhaustive human manual cropping of bounding boxes with additional advantages from identity discriminative attention selection that specially benefits re-id tasks beyond human knowledge. Extensive comparative evaluations demonstrate the re-id advantages of the proposed IDEAL model over a wide range of state-of-the-art re-id methods on two auto-detected re-id benchmarks CUHK03 and Market-1501.
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