素描
计算机科学
主观性
客观性(哲学)
证人
透视图(图形)
领域(数学分析)
身份(音乐)
人工智能
鉴定(生物学)
情报检索
草图识别
建筑
自然语言处理
数据科学
认识论
美学
算法
视觉艺术
手势识别
程序设计语言
艺术
哲学
手势
数学分析
生物
植物
数学
作者
Kejun Lin,Zhixiang Wang,Zheng Wang,Yinqiang Zheng,Shin’ichi Satoh
标识
DOI:10.1145/3581783.3611732
摘要
Person re-identification (re-ID) requires densely distributed cameras. In practice, the person of interest may not be captured by cameras and therefore need to be retrieved using subjective information (e.g., sketches from witnesses). Previous research defines this case using the sketch as sketch re-identification (Sketch re-ID) and focuses on eliminating the domain gap. Actually, subjectivity is another significant challenge. We model and investigate it by posing a new dataset with multi-witness descriptions. It features two aspects. 1) Large-scale. It contains over 4,763 sketches and 32,668 photos, making it the largest Sketch re-ID dataset. 2) Multi-perspective and multi-style. Our dataset offers multiple sketches for each identity. Witnesses' subjective cognition provides multiple perspectives on the same individual, while different artists' drawing styles provide variation in sketch styles. We further have two novel designs to alleviate the challenge of subjectivity. 1) Fusing subjectivity. We propose a non-local (NL) fusion module that gathers sketches from different witnesses for the same identity. 2) Introducing objectivity. An AttrAlign module utilizes attributes as an implicit mask to align cross-domain features. To push forward the advance of Sketch re-ID, we set three benchmarks (large-scale, multi-style, cross-style). Extensive experiments demonstrate our leading performance in these benchmarks. Dataset and Codes are publicly available at: https://github.com/Lin-Kayla/subjectivity-sketch-reid
科研通智能强力驱动
Strongly Powered by AbleSci AI