Automatic Detection
Automatic detection encompasses a broad range of techniques using machine learning and computer vision to identify patterns and objects within various data types, aiming to automate tasks previously requiring manual effort. Current research focuses heavily on deep learning models, including convolutional neural networks (CNNs), vision transformers (ViTs), and large language models (LLMs), applied to diverse domains such as medical image analysis, text processing, and satellite imagery. These advancements offer significant potential for improving efficiency and accuracy in fields ranging from healthcare diagnostics and environmental monitoring to content moderation and cybersecurity, ultimately impacting various scientific disciplines and practical applications.
Papers
Automated Detection and Counting of Windows using UAV Imagery based Remote Sensing
Dhruv Patel, Shivani Chepuri, Sarvesh Thakur, K. Harikumar, Ravi Kiran S., K. Madhava Krishna
Automatic detection of problem-gambling signs from online texts using large language models
Elke Smith, Nils Reiter, Jan Peters
Early Detection of Depression and Eating Disorders in Spanish: UNSL at MentalRiskES 2023
Horacio Thompson, Marcelo Errecalde
Strategies to Harness the Transformers' Potential: UNSL at eRisk 2023
Horacio Thompson, Leticia Cagnina, Marcelo Errecalde
Convolutional Neural Networks for Automatic Detection of Intact Adenovirus from TEM Imaging with Debris, Broken and Artefacts Particles
Olivier Rukundo, Andrea Behanova, Riccardo De Feo, Seppo Ronkko, Joni Oja, Jussi Tohka
Refining Diffusion Planner for Reliable Behavior Synthesis by Automatic Detection of Infeasible Plans
Kyowoon Lee, Seongun Kim, Jaesik Choi