Object-based loss function in segmented neural networks

Jin Liu, Qun Li
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Abstract

This paper proposes Object-based Loss Function in Segmented Neural Networks. Traditional Segmented Neural Network(SNN) are based on Pixel-based Back Propagation(PBP). Since the pixel ratios of the images occupied by different sizes of objects are not the same, the weight of the small objects in the segmentation is small, which means using PBP may greatly affects the accuracy of the detection when there are a large number of small objects. Considering this defect of PBP, we propose a Object-based Back Propagation(OBP) loss function weight design, that is, the back propagation weights of different objects are not equal, which is inversely proportional to the area occupied by the object. Segmented Neural Networks data set test.
分段神经网络中基于目标的损失函数
提出了分段神经网络中基于目标的损失函数。传统的分割神经网络(SNN)是基于基于像素的反向传播(PBP)。由于不同大小的物体所占图像的像素比不相同,分割时小物体的权重较小,这意味着在小物体数量较多的情况下,使用PBP可能会极大地影响检测的准确性。考虑到PBP的这一缺陷,我们提出了一种基于对象的反向传播(OBP)损失函数权值设计,即不同对象的反向传播权值不相等,与对象占用的面积成反比。分段神经网络数据集测试。
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