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A deep survey on supervised learning based human detection and activity classification methods

机译:基于监督的人类探测和活动分类方法的深度调查

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摘要

Human detection and activity recognition is very important research area in the healthcare, video surveillance, pedestrian detection, intelligent vehicle system and home care center. Among the various human activity detection frameworks, the statistical based approach were most intensively studied and used in practice in which pattern recognition was traditionally formulated. More recently, supervised learning based techniques and methods imported from statistical learning theory have deserved increasing attention. Many new supervised learning methods such as transfer learning, multi-instance learning, and the new trends in deep learning techniques have used for the formulation of solutions to the human activity detection. This paper reviews the automatic human detection and their activity recognition in the video sequences and static images. We explain several problems of human detection and activity recognition in different steps such as processing, segmentation of human features extraction and classification. Moreover, discuss the problems in each step and provide the recent state- of-the-art methods, gaps between recent methods, technical difficulties, applications and their challenges. Several features extraction techniques and corresponding problems for human classification have been discussed in details. Special emphasis have been given on convolution neural network that solves the problem of human segmentation, efficient classification and activity recognition. The objective of this review paper is to summarize and review related of the established and recent methods used in various stages of a human detection and activity classification system and identify research topics and applications that are at the forefront of this exciting and challenging field. Further, the evaluation protocols (i.e. datasets and simulation tools) and possible solution of current limitation have been discussed briefly in this survey.
机译:人类检测和活动识别是医疗保健,视频监控,行人检测,智能车辆系统和家庭护理中心的非常重要的研究领域。在各种人类活动检测框架中,基于统计的方法是最强烈地研究的,并且在实践中使用了传统上制定了模式识别的实践中。最近,来自统计学习理论导入的基于学习的基于学习的技术和方法应得的增加。许多新的监督学习方法,如转移学习,多实例学习和深度学习技术的新趋势已经用于制定对人类活动检测的解决方案。本文评论了视频序列和静态图像中的自动人性检测及其活动识别。我们解释了在不同步骤中的几个人体检测和活动识别问题,例如处理,人类特征提取和分类的分割。此外,讨论了每个步骤中的问题,并提供最近的最新方法,最近的方法,技术困难,应用及其挑战之间的差距。详细讨论了几种特征提取技术和人类分类的相应问题。对卷积神经网络进行了特别强调,解决了人类细分,高效分类和活动识别问题。本文的目的是总结和审查与人类探测和活动分类系统的各个阶段中使用的已建立和最近方法的相关方法,并确定了处于这一令人兴奋和具有挑战性的领域的最前沿的研究主题和应用。此外,在本调查中简要讨论了评估协议(即,数据集和仿真工具)以及可能的电流限制的解决方案。

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