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YOLO based Detection and Classification of Objects in video records

机译:基于YOLO基于视频记录中对象的检测和分类

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摘要

The primitive machine learning algorithms that are present break down each problem into small modules and solve them individually. Nowadays requirement of detection algorithm is to work end to end and take less time to compute. Real-time detection and classification of objects from video records provide the foundation for generating many kinds of analytical aspects such as the amount of traffic in a particular area over the years or the total population in an area. In practice, the task usually encounters slow processing of classification and detection or the occurrence of erroneous detection due to the incorporation of small and lightweight datasets. To overcome these issues, YOLO (You Only Look Once) based detection and classification approach (YOLOv2) for improving the computation and processing speed and at the same time efficiently identify the objects in the video records. The classification algorithm creates a bounding box for every class of objects for which it is trained, and generates an annotation describing the particular class of object. The YOLO based detection and classification (YOLOv2) use of GPU (Graphics Processing Unit) to increase the computation speed and processes at 40 frames per second.
机译:将每个问题分解为小模块并单独解决它们的原始机器学习算法。如今检测算法的要求是最终结束并花费更少的时间来计算。视频记录的实时检测和分类来自视频记录的基础,用于产生多种分析方面,例如多年来特定区域的交通量或区域中的总人口。在实践中,由于掺入小巧和轻量级数据集,任务通常遇到分类和检测的慢速处理或错误检测的发生。为了克服这些问题,YOLO(你只看一次)的检测和分类方法(YOLOV2),用于改善计算和处理速度,同时有效地识别视频记录中的对象。分类算法为其培训的每类对象创建一个边界框,并生成描述特定类对象类的注释。基于YOLO的检测和分类(YOLOV2)使用GPU(图形处理单元)以增加计算速度和每秒40帧的处理。

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