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Cross Domain Residual Transfer Learning for Person Re-Identification

机译:跨域残差转移学习,用于人员重新识别

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This paper presents a novel way to transfer model weights from one domain to another using residual learning framework instead of direct fine-tuning. It also argues for hybrid models that use learned (deep) features and statistical metric learning for multi-shot person re-identification when training sets are small. This is in contrast to popular end-to-end neural network based models or models that use hand-crafted features with adaptive matching models (neural nets or statistical metrics). Our experiments demonstrate that a hybrid model with residual transfer learning can yield significantly better re-identification performance than an end-to-end model when training set is small. On iLIDS-VID and PRID datasets, we achieve rank-1 recognition rates of 89.8% and 95%, respectively, which is a significant improvement over state-of-the-art.
机译:本文提出了一种使用残差学习框架而不是直接微调将模型权重从一个域转移到另一个域的新颖方法。它还提出了一种混合模型,该模型在训练集较小时使用学习的(深度)特征和统计度量学习来进行多镜头人员的重新识别。这与流行的基于端到端神经网络的模型或将手工特征与自适应匹配模型(神经网络或统计指标)结合使用的模型形成对比。我们的实验表明,当训练集较小时,具有残差转移学习的混合模型可以产生比端到端模型更好的重新识别性能。在iLIDS-VID和PRID数据集上,我们的1级识别率分别达到了89.8 \%和95 \%,这是对最新技术的重大改进。

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