视觉变换在视频人体活动识别中的有效性

Rahul Kumar, Shailender Kumar
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引用次数: 0

摘要

人体动作识别(Human Action Recognition, HAR)由于其在监视、行为检测、运动动作监测、老年人监测等方面的广泛应用而受到计算机视觉领域研究者的关注。由于数据量巨大,与基于机器学习的方法相比,基于深度学习的方法在HAR中被广泛使用。本研究探索了HAR中的各种深度学习和预训练深度学习模型。在预训练模型中,我们不需要从头开始训练模型,因为模型已经在大量数据上进行了训练。本研究探索了最近的预训练深度学习模型,以准确地对动作进行分类。这项研究有助于研究人员评估最新的视觉变压器模型在HAR领域的效益。本研究使用ucf50动作数据集来检验视觉转换模型在HAR中的有效性。在UCF 50动作数据集上,我们使用Vision Transformer模型变体达到了94.70%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effectiveness of Vision Transformers in Human Activity Recognition from Videos
Human Action Recognition (HAR) has got the attention of computer vision domain researchers due to its wide variety of applications like surveillance, behavior detection, sports action monitoring, and elderly monitoring. Due to the huge amount of data, the Deep Learning-based method is widely used in HAR compared to the Machine Learning-based approach. This study explored the various Deep Learning and pre-trained Deep Learning models in HAR. In the pre-trained model, we do not require to train the model from scratch, which is already trained on huge data. This study explored the recent pre-trained Deep Learning model to classify action accurately. This study helps the researcher to evaluate the benefit of the latest Vision Transformer model in the domain of HAR.UCF 50 action dataset is used in this study to examine the effectiveness of the Vision Transformer model in HAR. On UCF 50 action dataset, we have achieved 94.70% accuracy using the Vision Transformer model variant.
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