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
Deep Learning-Based Channel Squeeze U-Structure for Lung Nodule Detection and Segmentation
Mingxiu Sui, Jiacheng Hu, Tong Zhou, Zibo Liu, Likang Wen, Junliang Du
Morphological Detection and Classification of Microplastics and Nanoplastics Emerged from Consumer Products by Deep Learning
Hadi Rezvani, Navid Zarrabi, Ishaan Mehta, Christopher Kolios, Hussein Ali Jaafar, Cheng-Hao Kao, Sajad Saeedi, Nariman Yousefi
Automatic Detection of LLM-generated Code: A Case Study of Claude 3 Haiku
Musfiqur Rahman, SayedHassan Khatoonabadi, Ahmad Abdellatif, Emad Shihab
Large Language Models for Automatic Detection of Sensitive Topics
Ruoyu Wen, Stephanie Elena Crowe, Kunal Gupta, Xinyue Li, Mark Billinghurst, Simon Hoermann, Dwain Allan, Alaeddin Nassani, Thammathip Piumsomboon