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Minimizing Vehicle Re-Identification Dataset Bias Using Effective Data Augmentation Method

机译:使用有效数据增强方法将车辆重新识别数据集偏差降至最低

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Datasets are the important part of vehicle re-identification (re-id) research. The dataset which represents real world environment is crucial to vehicle re-id steps such as learning visual features, vehicle detection, examining performance of vehicle re-id algorithms, and so on. Often vehicle re-id datasets lacks in this context. In this paper, firstly, we investigate the vehicle re-id datasets bias problem using deep CNN model inception-v3 (Dataset classification). Dataset classification results indicates that current available vehicle re-id datasets are highly biased. Secondly, we present novel data augmentation technique to mitigate this issue by inserting additional type of variability in training set. Extensive experimental results shows that our approach can be helpful to minimize training set bias. Consequently, cross dataset vehicle re-id performance improves.
机译:数据集是车辆重新识别(re-id)研究的重要组成部分。代表现实世界环境的数据集对于车辆re-id步骤至关重要,例如学习视觉特征,车辆检测,检查车辆re-id算法的性能等。在这种情况下,经常缺少车辆re-id数据集。在本文中,首先,我们使用深度CNN模型inception-v3(数据集分类)研究车辆re-id数据集的偏差问题。数据集分类结果表明,当前可用的车辆re-id数据集存在很大偏差。其次,我们提出了新颖的数据增强技术,通过在训练集中插入其他类型的可变性来缓解此问题。大量的实验结果表明,我们的方法有助于最大程度地减少训练集偏差。因此,跨数据集的车辆re-id性能得以提高。

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