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Unsupervised Deep Domain Adaptation for Pedestrian Detection

机译:无监督的深域适应行人检测

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This paper addresses the problem of unsupervised domain adaptation on the task of pedestrian detection in crowded scenes. First, we utilize an iterative algorithm to iteratively select and auto-annotate positive pedestrian samples with high confidence as the training samples for the target domain. Meanwhile, we also reuse negative samples from the source domain to compensate for the imbalance between the amount of positive samples and negative samples. Second, based on the deep network we also design an unsupervised regularizer to mitigate influence from data noise. More specifically, we transform the last fully connected layer into two sub-layers - an element-wise multiply layer and a sum layer, and add the unsupervised regularizer to further improve the domain adaptation accuracy. In experiments for pedestrian detection, the proposed method boosts the recall value by nearly 30% while the precision stays almost the same. Furthermore, we perform our method on standard domain adaptation benchmarks on both supervised and unsupervised settings and also achieve state-of-the-art results.
机译:本文解决了无监督域适应在拥挤场景中的行人检测任务问题问题。首先,我们利用迭代算法来迭代地选择和自动注释积极的行人样本,并将其作为目标域的训练样本高度置信。同时,我们还重复使用来自源域的负样本来补偿阳性样品和阴性样品的量之间的不平衡。其次,基于深度网络,我们还设计了无监督的规范器,以减轻数据噪声的影响。更具体地,我们将最后一个完全连接的层转换为两个子层 - 一个元素 - WISE乘法层和和层,并添加无监视的常规器,以进一步提高域适应精度。在行人检测的实验中,所提出的方法将召回值提高了近30%,而精度保持几乎相同。此外,我们在监督和无监督设置的标准域适应基准上执行我们的方法,也实现了最先进的结果。

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