野生动物检测的联合分布和基于类的数据增强

Yunhao Pan, Chenhong Sui, Fuhao Jiang, Guobin Yang, Ankang Zang, Shengwen Zhou
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引用次数: 0

摘要

数据增强对于缓解训练样本不足,进一步提高野生动物检测精度具有重要意义。然而,目前的数据增强方法往往是对各类样本进行均等的增强,忽略了野生动物检测数据集中各类样本数量和大小分布不均匀的问题,导致模型泛化较差。为了解决这一问题,本文提出了一种基于联合分布和类的野生动物检测数据增强方法。在该方法中,针对小比例的不同类引入了不同的而不是通用的数据增强方法。这使得不同职业的分布更加平衡。因此,即使每个类的样本数量很少,也能得到很好的训练。为了评估该方法的有效性,进行了大量的对比实验。实验结果表明了该方法的优越性。具体来说,采用Swin Transformer作为骨干网络的Faster RCNN在数据增强后,检测准确率提高了0.8%,达到96.2%。
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Joint Distribution and Class-based Data Augmentation for Wildlife Detection
Data augmentation is of great importance to alleviate the insufficiency of training samples, and further improve wildlife detection accuracy. However, current data augmentation methods tend to augment all kinds of samples equally, ignoring the problem of uneven distribution of the number and size of all kinds of samples in wildlife detection datasets, resulting in poor generalization of the model. To address this problem, this paper proposes a joint distribution and class-based data augmentation method for wildlife detection. In this method, diverse rather than universal data augmentation methods are introduced for different classes with a small proportion. This makes the distributions of different classes more balanced. Therefore, each class even with a small number of samples gets good training as well. To evaluate the effectiveness of the proposed method, extensive comparative experiments are conducted. Experimental results show the superiority of our proposed method. Specifically, the detection accuracy of Faster RCNN with Swin Transformer as the backbone network is improved by 0.8% to 96.2% after data augmentation with our method.
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