期刊文献+
共找到1篇文章
< 1 >
每页显示 20 50 100
A Study of Using Synthetic Data for Effective Association Knowledge Learning
1
作者 Yuchi Liu Zhongdao Wang +1 位作者 Xiangxin Zhou Liang Zheng 《Machine Intelligence Research》 EI CSCD 2023年第2期194-206,共13页
Association,aiming to link bounding boxes of the same identity in a video sequence,is a central component in multi-object tracking(MOT).To train association modules,e.g.,parametric networks,real video data are usually... Association,aiming to link bounding boxes of the same identity in a video sequence,is a central component in multi-object tracking(MOT).To train association modules,e.g.,parametric networks,real video data are usually used.However,annotating person tracks in consecutive video frames is expensive,and such real data,due to its inflexibility,offer us limited opportunities to evaluate the system performance w.r.t.changing tracking scenarios.In this paper,we study whether 3D synthetic data can replace real-world videos for association training.Specifically,we introduce a large-scale synthetic data engine named MOTX,where the motion characteristics of cameras and objects are manually configured to be similar to those of real-world datasets.We show that,compared with real data,association knowledge obtained from synthetic data can achieve very similar performance on real-world test sets without domain adaption techniques.Our intriguing observation is credited to two factors.First and foremost,3D engines can well simulate motion factors such as camera movement,camera view,and object movement so that the simulated videos can provide association modules with effective motion features.Second,the experimental results show that the appearance domain gap hardly harms the learning of association knowledge.In addition,the strong customization ability of MOTX allows us to quantitatively assess the impact of motion factors on MOT,which brings new insights to the community. 展开更多
关键词 Multi-object tracking(MOT) data association synthetic data motion simulation association knowledge learning
原文传递
上一页 1 下一页 到第
使用帮助 返回顶部