Training Sample Formation for Convolution Neural Networks to Person Re-Identification from Video

С. А. Игнатьева, Р. П. Богуш, S. Ihnatsyeva, Rykhard P. Bohush
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引用次数: 0

Abstract

To improve the person re-identification system accuracy, an integrated approach is proposed in the formation of a training sample for convolutional neural networks, which involves the use of a new image dataset, an increase in the training examples number using existing datasets, and the use of a number of transformations to increase their diversity. The created dataset PolReID1077 contains images of people that were obtained in all seasons, which will improve the correct operation of re-identification systems when the seasons change. Another PolReID1077 advantage is the video data use obtained from external and internal surveillance in a large number of different filming locations. Therefore, the people images in the created set are characterized by the variability of the background, brightness and color characteristics. Joining the created dataset with the existing CUHK02, CUHK03, Market-1501, DukeMTMC-ReID and MSMT17 sets made it possible to obtain 109 772 images for training. An increase in the variety of generated examples is achieved by applying a cyclic shift to them, eliminating color and replacing a fragment with a reduced copy of another image. The research results on estimating the accuracy of re-identification for the ResNet-50 and DenseNet-121 convolutional neural networks during their training, using the proposed approach to form a training sample, are presented.
基于卷积神经网络的视频人物再识别训练样本生成
为了提高人员重新识别系统的准确性,在形成卷积神经网络的训练样本时提出了一种集成方法,该方法包括使用新的图像数据集,使用现有数据集增加训练样本数量,以及使用许多变换来增加其多样性。创建的数据集PolReID1077包含所有季节获得的人的图像,这将提高季节变化时重新识别系统的正确操作。PolReID1077的另一个优点是在大量不同的拍摄地点使用从外部和内部监控获得的视频数据。因此,所创建的集合中的人物图像具有背景、亮度和颜色特征的可变性。将创建的数据集与现有的CUHK02、CUHK03、Market-1501、DukeMTMC ReID和MSMT17集合相结合,可以获得109772张图像用于训练。通过对生成的示例应用循环移位、消除颜色并用另一图像的缩小副本替换片段,可以增加生成的示例的种类。给出了使用所提出的方法形成训练样本,估计ResNet-50和DenseNet-121卷积神经网络在训练过程中重新识别的准确性的研究结果。
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87
审稿时长
8 weeks
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