研究光照和视点变化对基于变压器的人再识别的影响

T. I. Amosa, P. Sebastian, L. I. Izhar, O. Ibrahim
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引用次数: 0

摘要

光照、视点、分辨率、背景、姿态等视觉因素的变化通常被认为是物体再识别(re-ID)中的重要问题。尽管人们普遍认识到它们在确定对象再识别模型的性能方面的重要性,但对这些因素如何影响再识别系统的关注还不够。研究这些因素如何影响re-ID模型的性能的主要障碍之一是缺乏具有这些困难视觉条件的无偏分布的数据集。为了弥补这种光度和几何变换平衡分布的大规模数据集的不足,最近的研究建议使用游戏引擎生成合成数据集。本研究提出了两个关键的视觉因素:照明和基于transformer的re-ID模型对合成数据集的影响的定量调查。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigating the Impact of Illumination and Viewpoint Variations on Transformer-based Person Re-Identification
Variations in visual factors such as illumination, viewpoint, resolution, background, pose, and so on are commonly regarded as significant issues in object re-identification (re-ID). Despite widespread recognition of their importance in determining the performance of an object re-ID model, not enough attention is paid to how these factors affect re-ID systems. One of the major impediments to investigating how these factors affect the performance of re-ID models is the lack of datasets with unbiased distribution of these difficult visual conditions. To make up for the lack of large-scale datasets with a balanced distribution of such photometric and geometric transforms, recent studies suggest using game engines to generate synthetic datasets. This study proposes a quantitative investigation of the impact of two critical visual factors: illumination and Tranfomer-based re-ID models on synthetic dataset.
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