基于高度随机合成数据的姿态感知多任务学习车辆再识别

Zheng Tang, M. Naphade, Stan Birchfield, Jonathan Tremblay, William Hodge, Ratnesh Kumar, Shuo Wang, Xiaodong Yang
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引用次数: 128

摘要

与学术界广泛研究的人再识别(ReID)相比,车辆再识别(ReID)受到的关注较少。车辆ReID具有挑战性,因为1)类内变异性高(由形状和外观对视点的依赖性造成),2)类间变异性小(由不同制造商生产的车辆在形状和外观上的相似性造成)。为了解决这些挑战,我们提出了一个姿态感知多任务重新识别(PAMTRI)框架。与以往的方法相比,该方法有两个创新之处。首先,它通过姿态估计中的关键点、热图和片段来明确地推理车辆姿态和形状,从而克服了视点依赖性。其次,在执行ReID的同时,通过对嵌入的姿态表示进行多任务学习,对车辆的语义属性(颜色和类型)进行联合分类。由于手动标记带有详细姿态和属性信息的图像是禁止的,我们创建了一个具有自动注释车辆属性的大规模高度随机合成数据集用于训练。大量的实验验证了每个提议组件的有效性,表明PAMTRI在两个主流车辆ReID基准(VeRi和CityFlow-ReID)上取得了显著的进步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PAMTRI: Pose-Aware Multi-Task Learning for Vehicle Re-Identification Using Highly Randomized Synthetic Data
In comparison with person re-identification (ReID), which has been widely studied in the research community, vehicle ReID has received less attention. Vehicle ReID is challenging due to 1) high intra-class variability (caused by the dependency of shape and appearance on viewpoint), and 2) small inter-class variability (caused by the similarity in shape and appearance between vehicles produced by different manufacturers). To address these challenges, we propose a Pose-Aware Multi-Task Re-Identification (PAMTRI) framework. This approach includes two innovations compared with previous methods. First, it overcomes viewpoint-dependency by explicitly reasoning about vehicle pose and shape via keypoints, heatmaps and segments from pose estimation. Second, it jointly classifies semantic vehicle attributes (colors and types) while performing ReID, through multi-task learning with the embedded pose representations. Since manually labeling images with detailed pose and attribute information is prohibitive, we create a large-scale highly randomized synthetic dataset with automatically annotated vehicle attributes for training. Extensive experiments validate the effectiveness of each proposed component, showing that PAMTRI achieves significant improvement over state-of-the-art on two mainstream vehicle ReID benchmarks: VeRi and CityFlow-ReID.
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