Document Boundary
Document boundary identification, crucial for various tasks from image segmentation to natural language processing, focuses on accurately delineating the limits of individual units within larger datasets. Current research emphasizes improving the precision of boundary detection using techniques like physics-informed neural networks, active learning strategies targeting boundary points, and novel model architectures such as U-Nets with attention mechanisms. These advancements are significant for improving the accuracy and efficiency of numerous applications, including medical image analysis, document processing, and machine translation, by enabling more robust and reliable processing of complex data.
Papers
QAmplifyNet: Pushing the Boundaries of Supply Chain Backorder Prediction Using Interpretable Hybrid Quantum-Classical Neural Network
Md Abrar Jahin, Md Sakib Hossain Shovon, Md. Saiful Islam, Jungpil Shin, M. F. Mridha, Yuichi Okuyama
MataDoc: Margin and Text Aware Document Dewarping for Arbitrary Boundary
Beiya Dai, Xing li, Qunyi Xie, Yulin Li, Xiameng Qin, Chengquan Zhang, Kun Yao, Junyu Han
Exploring the Boundaries: Thorough Software Testing for Safety-Critical Driving Scenarios Based on Kinematics in the Context of Autonomous Driving
Nico Schick
Exploring the Boundaries of Semi-Supervised Facial Expression Recognition: Learning from In-Distribution, Out-of-Distribution, and Unconstrained Data
Shuvendu Roy, Ali Etemad