Jigsaw Puzzle
Jigsaw puzzles, in various forms, serve as a compelling benchmark problem for diverse machine learning tasks, ranging from image and video reconstruction to unsupervised feature learning and even malware detection. Current research focuses on developing novel algorithms and model architectures, such as diffusion transformers, Federated learning approaches, and generative adversarial networks (GANs), to efficiently solve these puzzles, often incorporating techniques like relaxation labeling and Monte Carlo Tree Search. These advancements have implications for various fields, including medical image analysis, ancient script deciphering, and the design of multimodal AI applications, by improving the efficiency and accuracy of related tasks.
Papers
Nash Meets Wertheimer: Using Good Continuation in Jigsaw Puzzles
Marina Khoroshiltseva, Luca Palmieri, Sinem Aslan, Sebastiano Vascon, Marcello Pelillo
GALA: Graph Diffusion-based Alignment with Jigsaw for Source-free Domain Adaptation
Junyu Luo, Yiyang Gu, Xiao Luo, Wei Ju, Zhiping Xiao, Yusheng Zhao, Jingyang Yuan, Ming Zhang