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Research on Pedestrian Attitude Detection Algorithm from the Perspective of Machine Learning

机译:从机器学习角度研究人行为姿态检测算法

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In the rapid development of science and technology today, the intelligence of the visual system has been highly valued. The recognition and detection of pedestrian attitudes in a complex environment have become the application trend of intelligent video. The widely used of camera machine does not have such a function. Therefore, this article deeply discusses the relevant algorithms of pedestrian gesture detection and recognition based on machine learning. The traditional HOG feature detection can only achieve the relevant detection of the upright walking crowd target. While when the pedestrian makes different gestures, its detection effect is directly affected and challenging to be recognized. So, this article uses the checking methods of the deformable part model (DPM) to check the target pedestrian gesture and elaborate pedestrian's attitude estimation algorithm for the deformable parts principle. Finally, it combines the algorithm with HOG+SVM principles to simulate with the MATLAB and gets the experimental results to show that this approach can make a pedestrian posture test implemented to achieve high precision accuracy.
机译:在今天科学技术的快速发展中,视觉系统的智慧得到了高度重视。复杂环境中行人态度的认可和检测已成为智能视频的应用趋势。广泛使用的相机机没有这样的功能。因此,本文深入探讨了基于机器学习的行人手势检测和识别的相关算法。传统的猪特征检测只能实现直立行走人群目标的相关检测。虽然行人做出不同的手势,但其检测效果直接受到影响和挑战。因此,本文使用可变形部件模型(DPM)的检查方法来检查目标行人手势,并为可变形部件的行人的姿态估计算法进行精心制作。最后,它将算法与Hog + SVM原理结合起来与MATLAB模拟,并获得实验结果表明,这种方法可以制作实现的行人姿势测试以实现高精度精度。

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