结合GAN和迁移学习的ConvLSTM人体动作识别

Mohsin Raza Siyal, Mansoor Ebrahim, Syed Hasan Adil, Kamran Raza
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引用次数: 4

摘要

人体动作识别(HAR)是一个具有挑战性的时间序列分类问题,受到了计算机视觉研究者的广泛关注。本文研究了用于人类活动的不同技术,并提出了一种基于长短期记忆(LSTM)和生成对抗网络的卷积神经网络(CNN)人类行为识别方法。本研究评估了交叉熵和对抗损失函数在HAR分析中的性能。两个不同的数据集UFC101和经典的KTH数据集,用于实验目的。UFC101数据集包含13k个视频,其中包括101个人类动作,即演奏乐器,化妆等。相比之下,KTH数据集包含600个视频,其中包含25个不同的人进行的六种人类活动,包括散步、跑步、慢跑、拍手和挥手。同时,通过混合两种数据集演示了HAR的过程,并对其性能进行了评估。GAN通过对抗性训练来增强模型的鲁棒性,充分发现视图内和视图间的潜在联系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human Action Recognition using ConvLSTM with GAN and transfer learning
Human Action Recognition (HAR)is a challenging time series classification problem that has received significant attention from computer vision researchers. In this paper, different techniques used for human activities are investigated, and a human action recognition approach using a Convolutional Neural Network (CNN) with Long Short Term Memory (LSTM) and generative adversarial network is proposed. The proposed research evaluates the performance of cross-entropy and adversarial loss function for HAR analysis. Two different datasets UFC101 and the classic KTH dataset, are used for experimental purposes. The UFC101 dataset contains 13k videos in which 101 human actions are included i.e., playing instrument, makeup, etc. In contrast, KTH dataset contains 600 videos containing six human activities, including walking, running, jogging, hand clapping and hand waving, performed by 25 different persons. Also, demonstrates the process of HAR by mixing both datasets and evaluate the performance. The GAN enhances the model robustness by applying adversarial training which fully discovers the underlying connections in both intra-view and cross-view aspects.
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