Feb. 13, 2024, 5:48 a.m. | Shubhabrata Mukherjee Cory Beard Zhu Li

cs.CV updates on arXiv.org arxiv.org

Low-light conditions and occluded scenarios impede object detection in real-world Internet of Things (IoT) applications like autonomous vehicles and security systems. While advanced machine learning models strive for accuracy, their computational demands clash with the limitations of resource-constrained devices, hampering real-time performance. In our current research, we tackle this challenge, by introducing "YOLO Phantom", one of the smallest YOLO models ever conceived. YOLO Phantom utilizes the novel Phantom Convolution block, achieving comparable accuracy to the latest YOLOv8n model while simultaneously …

accuracy advanced applications autonomous autonomous vehicles computational convolution cs.cv current detection devices faster internet internet of things iot light limitations low machine machine learning machine learning models multimodal performance real-time research security systems vehicles world yolo

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