Enhancing Feature Fusion Using Attention for Small Object Detection

Jie Li, Yanxiang Gong, Zheng Ma, M. Xie
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Abstract

At present, object detection performance can meet some routine tasks' requirements. However, the detection performance for small-sized objects is far from satisfactory. Therefore, we propose the feature layer attention module and nonlinear positioning loss penalty based on size to improve small object detection performance. Our work proposes the feature layer attention module, which introduces an attention mechanism in the feature layer to enhance the model's attention to small objects. Through the feature fusion scheme proposed in this paper, we solve the problem of insufficient features of small objects to a certain extent and reduce the difficulty of model training. Besides, we introduce a size-based nonlinear penalty in the loss function, which can enhance the penalty for small object positioning errors. The effectiveness of our method has been demonstrated on small object data sets. On VisDrone2019 dataset, the proposed method improves the detection's AP by 2.2%. On TT100k dataset, the proposed method improves the detection's AP by 1.0%.
基于注意力增强特征融合的小目标检测
目前,目标检测性能可以满足一些常规任务的要求。然而,对于小尺寸物体的检测性能还远远不能令人满意。为此,我们提出了特征层关注模块和基于尺寸的非线性定位损失惩罚来提高小目标检测性能。本文提出了特征层关注模块,在特征层引入关注机制,增强模型对小目标的关注。通过本文提出的特征融合方案,在一定程度上解决了小目标特征不足的问题,降低了模型训练的难度。此外,我们在损失函数中引入了基于尺寸的非线性惩罚,可以增强对小目标定位误差的惩罚。该方法的有效性已在小型对象数据集上得到了验证。在VisDrone2019数据集上,该方法将检测的AP提高了2.2%。在TT100k数据集上,该方法将检测的AP提高了1.0%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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