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Crowd counting method based on feature fusion and attention mechanism

机译:基于特征融合和注意机制的人群计数方法

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Aiming at the problem of background noise interference and occlusion in complex crowded crowd scenes, a crowd counting network FANet based on feature fusion and attention mechanism is proposed. By introducing a feature fusion layer and a crowd region recognition module, FANet can effectively eliminate the influence of background interference and occlusion, thereby improving counting performance. As a supplement to the feature extraction network, the feature fusion layer aims to fuse low-level texture features and high-level features to avoid a large amount of loss of features, thereby enabling the model to have higher multi-scale information perception capabilities and improving training efficiency. The crowd region recognition module generates a corresponding attention weight map for the image through convolution and up-sampling operations, and based on this, achieves the purpose of suppressing background interference. Finally, the evaluation was conducted on two data sets. The experiment showed that the MAE of the proposed method on ShanghaiTech and UCF-QNRF achieved 1.1%,3% and 1.1% improvement respectively.
机译:提出了一种基于特征融合和注意机制的复杂拥挤人群场景中背景噪声干扰和闭塞问题的问题。通过引入特征融合层和人群区域识别模块,粉丝可以有效地消除背景干扰和闭塞的影响,从而提高计数性能。作为特征提取网络的补充,特征融合层旨在融合低级纹理特征和高级功能,以避免大量的功能损失,从而使模型能够具有更高的多尺度信息感知功能和更高的多尺度信息感知功能提高培训效率。人群区域识别模块通过卷积和上采样操作为图像产生相应的注意力图,并基于此,实现了抑制背景干扰的目的。最后,评估是在两个数据集上进行的。实验表明,上海科技和UCF-QNRF的提出方法的MAE分别取得了1.1%,3%和1.1%的改善。

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