基于视觉变换和卷积网络的人物身份识别集成学习

A. Gupta, Neil Gautam, D. Vishwakarma
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引用次数: 1

摘要

人的再识别是在不同的时间、不同的、具有挑战性的现实生活环境中,从多个角度识别目标个体的过程。这仍然是一个难题,因为在不同的摄像机拍摄到的同一个人身上存在大量的类内差异。现有的大多数模型需要大量的数据进行训练,这使得它们不能很好地泛化小数据集,从而降低了识别过程的鲁棒性。为了减少这种差异,本文介绍了端到端三流集成模型,分别对Vision Transformer、Resnet50和Densenet121架构进行了最小的更改。我们的模型在Market1501数据集上表现良好,在Duke MTMC ReID数据集上实现了90.05%和80.45%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ensemble Learning using Vision Transformer and Convolutional Networks for Person Re-ID
Person Re-Identification is the process of recognizing a targeted individual across multiple views at different times, in different and challenging real-life diverse settings. It remains a conundrum due to the significant amount of intra-class variation present in same individual caught across different cameras. Most of the existing models require a large amount of data for training, as a result of which they do not generalize well on small datasets and hence decreases the robustness of the identification process. To reduce this variance, this paper introduces an end-to-end triple stream ensemble model making minimal changes in the Vision Transformer, Resnet50 and Densenet121 architectures respectively. Our model performs well on the Market1501 dataset achieving an accuracy of 90.05% and 80.45% on the Duke MTMC ReID dataset.
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