[口头报告]Domain adaptive semantic segmentation based on prototype-guided and adaptive feature fusion
00
days
00
hours
00
minutes
00
seconds
00
days
00
hours
00
minutes
00
seconds

[口头报告]Domain adaptive semantic segmentation based on prototype-guided and adaptive feature fusion

Domain adaptive semantic segmentation based on prototype-guided and adaptive feature fusion
编号:23 稿件编号:224 访问权限:仅限参会人 更新:2024-05-15 17:47:13 浏览:530次 口头报告

报告开始:2024年05月30日 18:00 (Asia/Shanghai)

报告时间:20min

所在会议:[S4] Intelligent Equipment Technology » [S4-4] Afternoon of May 30th-4

暂无文件

摘要
Unsupervised domain adaptation technology is key to reducing the need for data labeling in computer vision tasks and implementing intelligent perception in equipment. Faced with the dispersion of feature distribution and class imbalance in real scenes (i.e., the target domain), such as blurry class boundaries and scarce samples, this paper proposes a Prototypes-Guided Adaptive Feature Fusion Model. It incorporates a Prototype-Guided Dual Attention Network that blends spatial and channel attention features to enhance class compactness. Moreover, an adaptive feature fusion module is introduced to flexibly adjust the importance of each feature, enabling the model to capture more class-discriminative features across different spatial locations and channels, thereby further improving semantic segmentation performance. Experiments on two challenging synthetic-to-real benchmarks, GTA5-to-Cityscape and SYNTHIA-to-Cityscape, validate the effectiveness of our method, demonstrating its advantages in dealing with complex scenes and data imbalance issues, and providing robust support for the visual perception technology of intelligent equipment.
关键字
domain adaptation, semantic segmentation, intelligent sensing, attention mechanism, self-training learning
报告人
Yuyu Yang
China University of Mining and Technology

稿件作者
Yuyu Yang China University of Mining and Technology
Jun Wang China University of Mining and Technology
Xiao Yang China University of Mining and Technology
Zaiyu Pan China University of Mining and Technology
Shuyu Han China University of Mining and Technology
发表评论
验证码 看不清楚,更换一张
全部评论

联系我们

投稿事宜:张老师
电话:0516-83995113
会务事宜:张老师
电话:0516-83590258
酒店事宜:张老师
电话:15852197548
会展合作:李老师
电话:0516-83590246
登录 注册缴费 提交摘要 酒店预订