计算机科学
人工智能
分割
模式识别(心理学)
特征(语言学)
组内相关
自然语言处理
机器学习
监督学习
交叉口(航空)
语义学(计算机科学)
图像分割
语义特征
过程(计算)
特征提取
特征学习
帕斯卡(单位)
基线(sea)
可靠性(半导体)
作者
Qihang Jia,Xiangfu Ding,Na Tian,Wencang Zhao
摘要
ABSTRACT Weakly supervised semantic segmentation plays a pivotal role in domains such as autonomous driving and medical image analysis. However, existing approaches often rely on limited semantic cues from single images or paired samples, leading to underutilized intraclass information and entangled interclass features—both of which significantly impair segmentation performance. To address these challenges, we propose a novel dual‐dimensional contrastive learning (D2CL) framework that explores fine‐grained feature attributes both across and within views, thereby promoting intraclass compactness and interclass discriminability in the feature space. Specifically, the interclass prototype contrastive learning module constructs a cross‐view dynamic prototype memory bank and imposes a contrastive loss to enhance category‐level distinctiveness. In parallel, the intraclass pixel contrastive learning module focuses on pixel‐wise variations within the same category from a single view, enabling the model to capture more refined semantic details and better handle intraclass diversity. Extensive experiments conducted on the PASCAL VOC 2012 and MS COCO 2014 datasets demonstrate that D2CL consistently boosts the performance of multiple baseline models. For instance, the mean intersection over union of the baseline model SEAM is improved from 64.5% to 67.7%, while another model AMN sees an increase from 69.6% to 71.8%, highlighting the general applicability and effectiveness of our method.
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