Robust Detection
Robust detection research aims to create systems capable of accurately identifying targets or anomalies even under challenging conditions, such as noise, variations in lighting, or adversarial attacks. Current efforts focus on developing robust models using techniques like convolutional neural networks (CNNs), transformers, and ensemble methods, often incorporating multimodal data or self-supervised learning to improve generalization and resilience. These advancements have significant implications across diverse fields, including autonomous systems, medical diagnosis, and combating misinformation by enabling more reliable and accurate detection in real-world applications.
33papers
Papers
March 4, 2025
Robust detection of overlapping bioacoustic sound events
Louis Mahon, Benjamin Hoffman, Logan S James, Maddie Cusimano, Masato Hagiwara, Sarah C Woolley, Olivier PietquinEarth Species Project●University of Edinburgh●McGill UniversityRobust Detection of Extremely Thin Lines Using 0.2mm Piano Wire
Jisoo Hong, Youngjin Jung, Jihwan Bae, Seungho Song, Sung-Woo Kang
February 20, 2025
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