论文标题
类分段损失及其在显着对象检测和细分中的应用
Class-Agnostic Segmentation Loss and Its Application to Salient Object Detection and Segmentation
论文作者
论文摘要
在本文中,我们提出了一种新的损失函数,称为类不足的分割(CAS)损失。随着CAS损失,课程描述符在网络培训期间学习。我们不需要定义A级A-Priori的标签,而是CAS损耗群集区域,外观相似,以弱监督的方式一起出现。此外,我们表明CAS损耗函数稀疏,有界和稳健的阶级失控。我们将CAS损耗函数应用于完全横向的RESNET101和DEEPLAB-V3架构中的二进制分割问题。我们在七个显着对象检测数据集的低和高保真培训数据的两个设置中对最先进方法的性能进行了研究。对于低保真训练数据(不正确的类标签)类别不合时宜的分割损失优于显着对象检测数据集上的最新方法,这是大约50%的差距。对于高保真培训数据(正确的类标签),类别分割模型的性能与最先进的方法一样好,同时击败大多数数据集中的最新方法。为了显示跨不同域的损失函数的实用性,我们还测试了一般分割数据集,其中类别分割的分段损耗在区域和边缘指标上都超过了巨大的边缘。
In this paper we present a novel loss function, called class-agnostic segmentation (CAS) loss. With CAS loss the class descriptors are learned during training of the network. We don't require to define the label of a class a-priori, rather the CAS loss clusters regions with similar appearance together in a weakly-supervised manner. Furthermore, we show that the CAS loss function is sparse, bounded, and robust to class-imbalance. We apply our CAS loss function with fully-convolutional ResNet101 and DeepLab-v3 architectures to the binary segmentation problem of salient object detection. We investigate the performance against the state-of-the-art methods in two settings of low and high-fidelity training data on seven salient object detection datasets. For low-fidelity training data (incorrect class label) class-agnostic segmentation loss outperforms the state-of-the-art methods on salient object detection datasets by staggering margins of around 50%. For high-fidelity training data (correct class labels) class-agnostic segmentation models perform as good as the state-of-the-art approaches while beating the state-of-the-art methods on most datasets. In order to show the utility of the loss function across different domains we also test on general segmentation dataset, where class-agnostic segmentation loss outperforms cross-entropy based loss by huge margins on both region and edge metrics.