Abstract

Object detection, a fundamental duty in computer vision that has a wide range of practical applications, they are surveillance, robotics, and autonomous driving. Recent developments of deep learning have got gradual improvemenrts in detection accuracy and speed. One of the most popular and effective deep learning models for object detection is YOLOv5. In this discussion, we an object detection model through YOLOv5 and its implementation for object detection tasks. We discuss the model’s architecture, training process, and evaluation metrics. Furthermore, we present experimental results on popular object detection benchmarks to demonstrate the efficacy and efficiency of YOLOv5 in detecting various objects in complex scenes. Our experiments states that YOLOv5 out performs other state of the art object detection models case of accuracy of detected image and speed of detection, making it a promising approach for real-world applications. Our work contributes to the growing body of research on deep learning-based object detection and provides valuable insights into the capabilities and limitations of YOLOv5. By improving accuracy, speed of object detection models, we have enabled a wide range of applications that can benefit society in countless ways.

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