Object Detection Model
Object detection models aim to automatically identify and locate objects within images or videos, a crucial task with broad applications. Current research emphasizes improving model accuracy and efficiency, particularly for challenging scenarios like detecting small or fuzzy objects, and adapting models to diverse data distributions and resource-constrained environments. Popular architectures include YOLO and EfficientDet variants, along with newer approaches leveraging transformers and diffusion models. These advancements are driving progress in fields ranging from autonomous vehicles and industrial automation to medical image analysis and agricultural monitoring.
Papers
Generating Minimalist Adversarial Perturbations to Test Object-Detection Models: An Adaptive Multi-Metric Evolutionary Search Approach
Cristopher McIntyre-Garcia, Adrien Heymans, Beril Borali, Won-Sook Lee, Shiva Nejati
Constellation Dataset: Benchmarking High-Altitude Object Detection for an Urban Intersection
Mehmet Kerem Turkcan, Sanjeev Narasimhan, Chengbo Zang, Gyung Hyun Je, Bo Yu, Mahshid Ghasemi, Javad Ghaderi, Gil Zussman, Zoran Kostic