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Optimizing Intersection-Over-Union in Deep Neural Networks for Image Segmentation

机译:在深度神经网络中优化交叉路口联合以进行图像分割

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We consider the problem of learning deep neural networks (DNNs) for object category segmentation, where the goal is to label each pixel in an image as being part of a given object (foreground) or not (background). Deep neural networks are usually trained with simple loss functions (e.g., softmax loss). These loss functions are appropriate for standard classification problems where the performance is measured by the overall classification accuracy. For object category segmentation, the two classes (foreground and background) are very unbalanced. The intersection-over-union (IoU) is usually used to measure the performance of any object category segmentation method. In this paper, we propose an approach for directly optimizing this IoU measure in deep neural networks. Our experimental results on two object category segmentation datasets demonstrate that our approach outperforms DNNs trained with standard softmax loss.
机译:我们考虑为对象类别分割学习深度神经网络(DNN)的问题,目标是将图像中的每个像素标记为给定对象(前景)或不属于(背景)的一部分。深度神经网络通常使用简单的损失函数(例如softmax损失)进行训练。这些损失函数适用于标准分类问题,在这些问题中,性能是通过整体分类精度来衡量的。对于对象类别细分,这两个类别(前景和背景)非常不平衡。联合交叉点(IoU)通常用于衡量任何对象类别分割方法的性能。在本文中,我们提出了一种直接优化深度神经网络中的IoU度量的方法。我们在两个对象类别细分数据集上的实验结果表明,我们的方法优于采用标准softmax损失训练的DNN。

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