利用深度学习的对象识别检测人类行为:综述

Utsab Mukherjee, P. Bandyopadhyay
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引用次数: 0

摘要

社会的主要缺点是人性的虚假性;因此,通过分析这个人的视频或图像来预测这个人的性格是非常必要的。从第二次世界大战后,由于技术的进步,自过去几十年以来,许多国家都开发了高分辨率的低成本相机。它们通常使用RGB和深度特性来增强相机捕获的图像质量。因此,目标识别是计算机科学的一个新分支。它与视频的图像理解和分析有着密切的关系;这鼓励了近年来一些研究人员在这一领域的工作。随着深度学习分支的发展,一些高效的工具已经被开发出来,这些工具被证明是高效学习图像和语义的高级深层特征的工具。本文对基于深度学习的目标识别技术进行了综述。本文包括深度学习和目标识别的基础知识。然后讨论了物体识别和运动物体识别所需的一些工具,最后讨论了该主题的一些未来目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Human Behaviour by Object Recognition Using Deep Learning: A Review
The major drawback of the society is the falsehood of human nature; so prediction of nature of the individual by analysing the video or image of that person is highly necessary. From the post World War II period due to the advancement of technology since the past few decades many countries have developed low cost cameras with high resolution. They generally use the RGB and depth features to enhance the image quality captured by the camera. Hence object recognition is the new branch of computer science which emerges. It has got aclose relationship with image understanding and analysis of video; which encourages several researchers to work in this domain since past few years. As the branch of deep learning develops handful of efficient tools have been develop which prove to be highly efficient to learn high level deeper features of the image and semantics. In this paper a review on object recognition using deep learning has been discussed. This paper includes basics of deep learning and object recognition. Then we have discussed some tools required to perform object recognition as well as moving object recognition and finally some future goals of this subject have been discussed.
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