TA-L.C2.4
Self-SuperFlow: Self-supervised Scene Flow Prediction in Stereo Sequences
Katharina Bendig, Technische Universität Kaiserslautern, Germany; René Schuster, Didier Stricker, German Research Center for Artificial Intelligence - DFKI, Germany
Session:
Self-Supervised Learning
Track:
Applications of Machine Learning
Location:
Room C2
Presentation Time:
Tue, 18 Oct, 17:15 - 17:30 China Standard Time (UTC +8)
Tue, 18 Oct, 11:15 - 11:30 Central European Time (UTC +1)
Tue, 18 Oct, 09:15 - 09:30 UTC
Tue, 18 Oct, 05:15 - 05:30 Eastern Time (UTC -5)
Tue, 18 Oct, 11:15 - 11:30 Central European Time (UTC +1)
Tue, 18 Oct, 09:15 - 09:30 UTC
Tue, 18 Oct, 05:15 - 05:30 Eastern Time (UTC -5)
Session Chair:
Onur Guleryuz, Google
Presentation
Discussion
Resources
No resources available.
Session TA-L.C2
TA-L.C2.1: Refining Self-Supervised Learning in Imaging: Beyond Linear Metric
Bo Jiang, Hamid Krim, Tianfu Wu, North Carolina State University, United States of America; Derya Cansever, US Army Research Office, United States of America
TA-L.C2.2: SCENE REPRESENTATION LEARNING FROM VIDEOS USING SELF-SUPERVISED AND WEAKLY-SUPERVISED TECHNIQUES
Raghuveer Peri, University of Southern California, United States of America; Srinivas Parthasarathy, Shiva Sundaram, Amazon Inc., United States of America
TA-L.C2.3: SELF-SUPERVISED PRETRAINING FOR DEEP HASH-BASED IMAGE RETRIEVAL
Haeyoon Yang, Young Kyun Jang, Isaac Kang, Nam Ik Cho, Seoul National University, Korea, Republic of
TA-L.C2.4: Self-SuperFlow: Self-supervised Scene Flow Prediction in Stereo Sequences
Katharina Bendig, Technische Universität Kaiserslautern, Germany; René Schuster, Didier Stricker, German Research Center for Artificial Intelligence - DFKI, Germany
TA-L.C2.5: Object-Aware Self-supervised Multi-Label Learning
Kaixin Xu, Ziyuan Zhao, Zeng Zeng, Institute of Infocomm Research, Singapore; Liyang Liu, Bharadwaj Veeravalli, National University of Singapore, Singapore