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Qualitative Prediction and Recognition of ongoing Human Action Sequences Using Deep Neural Networks

机译:利用深神经网络进行定性预测和识别持续的人体动作序列

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Human action detection (HAD) is an important research area in the recent decades that can be applied in many applications such as security, gaming, virtual reality interfaces, surveillance systems, etc. The authors have used object detection algorithms with deep neural network-based classifiers in this experiment. Further, the proposed research work aims to explore the solutions for object detection in HAD. The model has been provided with a set of images, wherein each image, a person will be performing an activity such as standing, sitting, bending, waving, or sleeping. The label of an image will be the activity that is being performed in those images. The model will learn this relationship, and then it can predict the label of an input that it has never seen. The model is trained and tested with a dataset consisting of random images downloaded from the internet.
机译:人类行动检测(曾)是近几十年来的重要研究领域,可以应用于许多应用,如安全,游戏,虚拟现实界面,监控系统等。作者使用了对象检测算法与深神经网络为基础的本实验中的分类器。此外,拟议的研究工作旨在探讨对象检测的解决方案。该模型已经提供了一组图像,其中每个图像,一个人将执行诸如常设,坐,弯曲,挥舞或睡觉的活动。图像的标签将是在这些图像中执行的活动。该模型将学习这种关系,然后它可以预测它从未见过的输入的标签。该模型培训并使用从Internet下载的随机图像组成的数据集进行测试。

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