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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Human activity recognition from UAV-captured video sequences
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Human activity recognition from UAV-captured video sequences

机译:从无人机捕获的视频序列识别人类活动

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摘要

This research paper introduces a new approach for human activity recognition from UAV-captured video sequences. The proposed approach involves two phases: an offline phase and an inference phase. A scene stabilization step is performed together with these two phases. The offline phase aims to generate the human/non-human model as well as a human activity model using a convolutional neural network. The inference phase makes use of the already generated models in order to detect humans and recognize their activities. Our main contribution lies in adapting the convolutional neural networks, normally dedicated to the classification task, to detect humans. In addition, the classification of human activities is carried out according to two scenarios: An instant classification of video frames and an entire classification of the video sequences. Relying on an experimental evaluation of the proposed methods for human detection and human activity classification on the UCF-ARG dataset, we validated not only these contributions but also the performance of our methods compared to the existing ones. (C) 2019 Elsevier Ltd. All rights reserved.
机译:本研究论文介绍了从无人机捕获的视频序列识别人类活动识别的新方法。该方法涉及两个阶段:离线阶段和推理阶段。与这两个阶段一起进行场景稳定步骤。离线阶段旨在使用卷积神经网络生成人/非人体模型以及人类活动模型。推理阶段利用已经生成的模型以检测人类并识别他们的活动。我们的主要贡献在于调整卷积神经网络,通常致力于分类任务,以检测人类。此外,人类活动的分类根据两种情况进行:视频帧的即时分类和视频序列的整个分类。依赖于UCF-arg数据集的人类检测和人类活动分类的建议方法的实验评估,我们不仅验证了这些贡献,也验证了我们的方法与现有的贡献。 (c)2019年elestvier有限公司保留所有权利。

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