Place Solution
"Place solution" research focuses on developing and optimizing algorithms that achieve top performance in various computer vision and related challenges. Current efforts concentrate on improving model architectures like transformers and incorporating techniques such as model ensembles, test-time augmentation, and innovative loss functions to address issues like class imbalance, occlusion, and temporal consistency in tasks ranging from video object segmentation and question answering to 3D reconstruction and semantic segmentation. These advancements significantly impact the field by pushing the boundaries of performance in crucial areas like autonomous driving, medical image analysis, and video understanding, leading to more robust and accurate solutions for real-world applications.
Papers
Agriculture-Vision Challenge 2022 -- The Runner-Up Solution for Agricultural Pattern Recognition via Transformer-based Models
Zhicheng Yang, Jui-Hsin Lai, Jun Zhou, Hang Zhou, Chen Du, Zhongcheng Lai
1st Place Solutions for RxR-Habitat Vision-and-Language Navigation Competition (CVPR 2022)
Dong An, Zun Wang, Yangguang Li, Yi Wang, Yicong Hong, Yan Huang, Liang Wang, Jing Shao