Deep Structural Feature Learning: Re-Identification of simailar vehicles In Structure-Aware Map Space

Wenqian Zhu, R. Hu, Zhongyuan Wang, Dengshi Li, Xiyue Gao
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引用次数: 1

Abstract

Vehicle re-identification (re-ID) has received more attention in recent years as a significant work, making huge contribution to the intelligent video surveillance. The complex intra-class and inter-class variation of vehicle images bring huge challenges for vehicle re-ID, especially for the similar vehicle re-ID. In this paper we focus on an interesting and challenging problem, vehicle re-ID of the same/similar model. Previous works mainly focus on extracting global features using deep models, ignoring the individual loa-cal regions in vehicle front window, such as decorations and stickers attached to the windshield, that can be more discriminative for vehicle re-ID. Instead of directly embedding these regions to learn their features, we propose a Regional Structure-Aware model (RSA) to learn structure-aware cues with the position distribution of individual local regions in vehicle front window area, constructing a FW structural map space. In this map sapce, deep models are able to learn more robust and discriminative spatial structure-aware features to improve the performance for vehicle re-ID of the same/similar model. We evaluate our method on a large-scale vehicle re-ID dataset Vehicle-1M. The experimental results show that our method can achieve promising performance and outperforms several recent state-of-the-art approaches.
深度结构特征学习:结构感知地图空间中相似车辆的再识别
车辆再识别(re-ID)作为近年来备受关注的一项重要工作,对智能视频监控做出了巨大贡献。车辆图像类内和类间的复杂变化给车辆再识别带来了巨大的挑战,特别是对于相似的车辆再识别。本文主要研究了一个有趣且具有挑战性的问题,即相同/相似车型的车辆重识别问题。以前的工作主要集中在使用深度模型提取全局特征,忽略了车辆前窗的单个局部区域,如挡风玻璃上的装饰和贴纸,这些区域对车辆重新识别更具辨别能力。本文提出了一种区域结构感知模型(Regional Structure-Aware model, RSA),利用单个局部区域在汽车前窗区域的位置分布来学习结构感知线索,构建FW结构地图空间,而不是直接嵌入这些区域来学习它们的特征。在该地图空间中,深度模型能够学习到更鲁棒和判别性更强的空间结构感知特征,从而提高相同/相似模型的车辆再识别性能。我们在大规模车辆重新识别数据集vehicle - 1m上评估了我们的方法。实验结果表明,我们的方法可以达到很好的性能,并且优于最近几种最先进的方法。
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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