The deep CNNs in image semantic segmentation typically require a large number of densely-annotated images for training and have difficulties in generalizing to unseen object categories. Therefore, few-shot segmentation has been developed to perform segmentation with just a few annotated examples. In this work, we tackle the few-shot segmentation using a self-regularized prototypical network (SRPNet) based on prototype extraction for better utilization of the support information. The proposed SRPNet extracts class-specific prototype representations from support images and generates segmentation masks for query images by a distance metric - the fidelity. A direct yet effective prototype regularization on support set is proposed in SRPNet, in which the generated prototypes are evaluated and regularized on the support set itself. The extent to which the generated prototypes restore the support mask imposes an upper limit on performance. The performance on the query set should never exceed the upper limit no matter how complete the knowledge is generalized from support set to query set. With the specific prototype regularization, SRPNet fully exploits knowledge from the support and offers high-quality prototypes that are representative for each semantic class and meanwhile discriminative for different classes. The query performance is further improved by an iterative query inference (IQI) module that combines a set of regularized prototypes. Our proposed SRPNet achieves new state-of-art performance on 1-shot and 5-shot segmentation benchmarks.
翻译:在图像语义分割的深度CNN 中,图像语义分割的深度CNN通常需要大量高密度附加说明的图像,用于培训,并难以将其概括为不可见的对象类别。因此,已经开发了几发点截图分解,只用几个附加说明的例子来进行分解。在这项工作中,我们利用基于原型提取的自我正规化的原型原型准模式网络(SRPNet)处理微小截图分解,以更好地利用支持信息。拟议的SRPNet从支持图像中提取了特定类别原型表解,并通过远程测量(忠诚)为查询图像生成的图像生成了分解。SRPNet在SRPNet中提议了一个直接有效的支持集成原型,在支持集成的原型中进行了直接有效的原型规范,在支持集成的原型中对原型原型原型进行了评估,并在支持集成的原型中进行了规范。 创建的原型原型在常规版本1类中实现了对立式的状态的升级。