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Spatial Attention Network for Head Detection

机译:用于头部检测的空间注意力网络

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Human head detection is widely used in computer vision. However, in practical applications, human head detection is likely to cause false alarms because of the angle, light condition, and cameras. This paper proposes a novel spatial attention network (SAN) which adopts the saliency module to exploit the environmental information beyond the proposal which is ignored in the Faster-RCNN. At the meantime, the class score and saliency score are fused together through a suitable strategy to effectively suppress false positive samples. In order to train and test our model, this paper has established a dataset including 55,802 images. We have evaluated our method and the final experimental results show that our model is significantly superior to the Faster-RCNN model.
机译:人体头部检测广泛用于计算机视觉。但是,在实际应用中,由于角度,光线条件和摄像头的原因,人的头部检测很可能会引起误报。本文提出了一种新颖的空间关注网络(SAN),该网络采用显着性模块来开发环境信息,这超出了Faster-RCNN中所忽略的建议。同时,通过适当的策略将类别分数和显着性分数融合在一起,以有效地抑制假阳性样本。为了训练和测试我们的模型,本文建立了一个包含55,802张图像的数据集。我们已经评估了我们的方法,最终的实验结果表明我们的模型明显优于Faster-RCNN模型。

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