论文标题
开放式识别的特定班级语义重建
Class-Specific Semantic Reconstruction for Open Set Recognition
论文作者
论文摘要
开放式识别使深度神经网络(DNN)能够识别未知类别的样本,同时在已知类别的样本上保持较高的分类精度。基于自动编码器(AE)和原型学习的现有方法在处理这项具有挑战性的任务方面具有很大的潜力。在这项研究中,我们提出了一种新的方法,称为类别特定的语义重建(CSSR),该方法整合了AE和原型学习的力量。具体而言,CSSR用特定于类的AE表示的歧管替代了原型点。与传统的基于原型的方法不同,CSSR模型在单个AE歧管上的每个已知类别,并通过AE的重建误差来测量类归属感。特定于类的AE被插入DNN主链的顶部,并重建DNN所学的语义表示,而不是原始图像。通过端到端的学习,DNN和AES相互促进,以学习歧视性和代表性信息。在多个数据集上进行的实验结果表明,所提出的方法在近距离和开放式识别中都取得了出色的性能,并且非常简单且灵活地将其纳入现有框架中。
Open set recognition enables deep neural networks (DNNs) to identify samples of unknown classes, while maintaining high classification accuracy on samples of known classes. Existing methods basing on auto-encoder (AE) and prototype learning show great potential in handling this challenging task. In this study, we propose a novel method, called Class-Specific Semantic Reconstruction (CSSR), that integrates the power of AE and prototype learning. Specifically, CSSR replaces prototype points with manifolds represented by class-specific AEs. Unlike conventional prototype-based methods, CSSR models each known class on an individual AE manifold, and measures class belongingness through AE's reconstruction error. Class-specific AEs are plugged into the top of the DNN backbone and reconstruct the semantic representations learned by the DNN instead of the raw image. Through end-to-end learning, the DNN and the AEs boost each other to learn both discriminative and representative information. The results of experiments conducted on multiple datasets show that the proposed method achieves outstanding performance in both close and open set recognition and is sufficiently simple and flexible to incorporate into existing frameworks.