Feb. 14, 2024, 5:46 a.m. | Jacob Tyo Motolani Olarinre Youngseog Chung Zachary C. Lipton

cs.CV updates on arXiv.org arxiv.org

Despite significant progress in optical character recognition (OCR) and computer vision systems, robustly recognizing text and identifying people in images taken in unconstrained \emph{in-the-wild} environments remain an ongoing challenge. However, such obstacles must be overcome in practical applications of vision systems, such as identifying racers in photos taken during off-road racing events. To this end, we introduce two new challenging real-world datasets - the off-road motorcycle Racer Number Dataset (RND) and the Muddy Racer re-iDentification Dataset (MUDD) - to highlight …

applications benchmarks beyond challenge character recognition computer computer vision cs.cv datasets environments images obstacles ocr optical optical character recognition people photos practical progress racing recognition systems text vision

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