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A Framework for Human Recognition Based on Locomotive Object Extraction

机译:基于机车对象提取的人为识别框架

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Moving Object detection based on video, of late has gained momentum in the field of research. Moving object detection has extensive application areas and is used for monitoring intelligence interaction between human and computer, transportation of intelligence, and navigating visual robotics, clarity in steering systems. It is also used in various other fields for diagnosing, compressing images, reconstructing 3D images, retrieving video images and so on. Since surveillance of human movement detection is subjective, the human objects are precisely detected to the framework proposed for human detection based on the Locomotive Object Extraction.The issue of illumination changes and crowded human image is discriminated. The image is detected through the detection feature that identifies head and shoulder and is the loci for the proposed framework. The detection of individual objects has been revamped appreciably over the recent years but even now environmental factors and crowd-scene detection remains significantly difficult for detection of moving object. The proposed framework subtracts the background through Gaussian mixture model and the area of significance is extracted. The area of significance is transformed to white and black picture by picture binarization. Then, Wiener filter is employed to scale the background level for optimizing the results of the object in motion. The object is finally identified. The performance in every stage is measured and is evaluated. The result in each stage is compared and the performance of the proposed framework is that of the existing system proves satisfactory.
机译:基于视频的移动物体检测,迟到已经在研究领域获得了势头。移动物体检测具有广泛的应用领域,用于监控人力和计算机之间的智能互动,智能运输和导航视觉机器人,指导系统的清晰度。它还用于各种其他领域,用于诊断,压缩图像,重建3D图像,检索视频图像等。由于人体运动检测的监视是主观的,因此基于机车对象提取,精确地检测人体对人类对人类检测所提出的框架。鉴别照明变化和拥挤的人类图像的问题。通过识别头部和肩部的检测特征来检测图像,并且是所提出的框架的基因座。在近年来,单个物体的检测已经明显地改进,但即使是现在的环境因素和人群场景检测仍然难以检测移动物体。所提出的框架通过高斯混合模型减去了背景,提取了重要性面积。通过图片二值化转变为白色和黑色图片的重要性。然后,使用维纳滤波器来缩放背景电平,以优化运动中的对象的结果。最终识别对象。测量每个阶段的性能并进行评估。比较每个阶段的结果,并且所提出的框架的性能是现有系统的令人满意。

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