Jan. 13, 2024, 10:04 a.m. | Haziqa Sajid

Unite.AI www.unite.ai

Up until now, object detection in images using computer vision models faced a major roadblock of a few seconds of lag due to processing time. This delay hindered practical adoption in use cases like autonomous driving. However, the YOLOv8 computer vision model's release by Ultralytics has broken through the processing delay. The new model can […]


The post Unpacking Yolov8: Ultralytics’ Viral Computer Vision Masterpiece appeared first on Unite.AI.

adoption artificial intelligence autonomous autonomous driving cases computer computer vision delay detection driving images major object-detection object-segmentation practical processing release through use cases viral vision vision models yolo yolov7 yolov8

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