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Research on de-motion blur image processing based on deep learning

机译:基于深度学习的去运动模糊图像处理研究

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In recent years, with the rapid development of computer technology and network technology, computer vision has been widely used in various scientific fields. Human motion recognition, as an important branch of computer vision, is essentially to classify human motion information in motion images correctly. It has great significance in intelligent monitoring and security, human-computer interaction, motion analysis and other fields. At present, there are still some problems in human motion recognition methods. Firstly, how to extract and characterize the motion information in images has been one of the difficulties in this field; secondly, with the appearance of kinect and other depth cameras, researchers have provided the depth information of human motion images, and how to effectively use these depth information to achieve human motion recognition and classification is also an important research issue; finally, when the amount of sample data is small, how to use the deep learning network model to achieve a higher human motion recognition rate? Based on UTD-MHAD database, this paper studies the human motion recognition of RGB image and depth image captured simultaneously by kinect, and carries out relevant discussion and analysis on the above problems, using micro-inertial sensors (MTi-G-700 developed by Xsens and Android mobile phones, tablets and other personal mobile devices come with MEMS gyroscopes and accelerometers) to correct the image to motion blur, build a new mathematical model, use the inertial data obtained by MIMU in a short time to estimate the position, attitude and speed of camera motion, correct the image pixel position, perform image de-motion blur processing, and then perform image processing such as denoising to solve the image motion blur problem. A new algorithm is developed and its science is verified by MATLAB simulation. (C) 2019 Published by Elsevier Inc.
机译:近年来,随着计算机技术和网络技术的快速发展,计算机愿景已广泛应用于各种科学领域。作为计算机愿景的重要分支,人类运动识别本质上是正确地对运动图像中的人类运动信息进行分类。它在智能监控和安全性,人机互动,运动分析和其他领域具有重要意义。目前,人类运动识别方法仍存在一些问题。首先,如何提取和表征图像中的运动信息是该字段中的困难之一;其次,随着Kinect和其他深度摄像机的出现,研究人员提供了人类运动图像的深度信息,以及如何有效地使用这些深度信息来实现人类运动识别和分类也是一个重要的研究问题;最后,当样本数据量很小时,如何使用深学习网络模型来实现更高的人类运动识别率?基于UTD-MHAD数据库,本文通过Kinect同时捕获的RGB图像和深度图像的人体运动识别,并使用微型传感器进行相关讨论和分析上述问题(MTI-G-700开发Xsens和Android手机,平板电脑和其他个人移动设备都带有MEMS陀螺仪和加速度计,以纠正图像的运动模糊,构建一个新的数学模型,使用MIMU在短时间内获得的惯性数据来估算位置,姿态和相机运动的速度,校正图像像素位置,执行图像去移模糊处理,然后执行诸如去噪的图像处理来解决图像运动模糊问题。开发了一种新的算法,Matlab仿真验证了其科学。 (c)2019年由elsevier公司发布

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