Key Result
Recent research focuses on advancing various computer vision and machine learning tasks through large-scale challenges and competitions. These challenges evaluate novel algorithms and model architectures, such as neural networks (including variations like nnU-Net and Swin UNETR) and retrieval-augmented generation models, across diverse applications including image and video super-resolution, saliency prediction, object detection, and quality assessment. The results provide valuable benchmarks and datasets for the community, accelerating progress in these fields and informing the development of more robust and efficient algorithms for real-world applications.
Papers
Improving the State of the Art for Training Human-AI Teams: Technical Report #2 -- Results of Researcher Knowledge Elicitation Survey
James E. McCarthy, Lillian Asiala, LeeAnn Maryeski, Dawn Sillars
Improving the State of the Art for Training Human-AI Teams: Technical Report #1 -- Results of Subject-Matter Expert Knowledge Elicitation Survey
James E. McCarthy, Lillian Asiala, LeeAnn Maryeski, Nyla Warren
NTIRE 2023 Challenge on Light Field Image Super-Resolution: Dataset, Methods and Results
Yingqian Wang, Longguang Wang, Zhengyu Liang, Jungang Yang, Radu Timofte, Yulan Guo
MIPI 2023 Challenge on RGBW Remosaic: Methods and Results
Qianhui Sun, Qingyu Yang, Chongyi Li, Shangchen Zhou, Ruicheng Feng, Yuekun Dai, Wenxiu Sun, Qingpeng Zhu, Chen Change Loy, Jinwei Gu
MIPI 2023 Challenge on RGBW Fusion: Methods and Results
Qianhui Sun, Qingyu Yang, Chongyi Li, Shangchen Zhou, Ruicheng Feng, Yuekun Dai, Wenxiu Sun, Qingpeng Zhu, Chen Change Loy, Jinwei Gu