混合 HAR-CNN 模型:用于预测和识别人类活动识别的混合卷积神经网络模型

Venugopal Rao A, Santosh Kumar Vishwakarma, Shakti Kundu, Varun Tiwari
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摘要

过去几年来,人类活动识别(HAR)是计算机视觉领域一个活跃的研究领域,由于缺乏完善的识别系统,该领域的研究仍在继续。人类活动识别系统涵盖电子健康、病人监控、辅助日常生活活动、视频监控、安全和行为分析以及体育分析。许多研究人员提出了利用视觉感知检测人类活动的技术。研究人员需要解决的问题包括:人类活动检测中的光线变化,场景、周围环境和记录环境之间的类间相似性,以及时间变化,从而构建一个高效的基于视觉的人类活动识别系统。然而,许多深度学习模型的一个显著缺点是,由于上述冲突,它们无法在真实世界场景中取得令人满意的结果。为了应对这一挑战,我们开发了一种混合 HAR-CNN 分类器,旨在通过结合两种模型来增强深度 CNN 的学习成果:改进型 CNN 和 VGG-19。我们使用 KTH 数据集收集了 6000 张图像,用于训练、验证和测试我们提出的技术。我们的研究结果表明,结合了改进型 CNN 和 VGG-19 Net 的混合 HAR-CNN 模型优于改进型 CNN 和 VGG-19 Net 等单个深度学习模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid HAR-CNN Model: A Hybrid Convolutional Neural Network Model for Predicting and Recognizing the Human Activity Recognition
Human activity recognition (HAR) is an active research area in computer vision from past several years and research is still continuing in this field due to the unavailability of perfect recognition system. The human activity recognition system it covers e-health, patient monitoring, assistive daily living activities, video surveillance, security and behaviour analysis, and sports analysis. Many researchers have suggested techniques that use visual perception to detect human activities. Researchers will need to address problems including light variations in human activity detection, interclass similarity between scenes, the surroundings and recording setting, and temporal variation in order to construct an efficient vision-based human activity recognition system. However, a significant drawback of many deep learning models is their inability to achieve satisfactory results in real-world scenarios due to the conflicts mentioned above. To address this challenge, we developed a hybrid HAR-CNN classifier aimed at enhancing the learning outcomes of Deep CNNs by combining two models: Improved CNN and VGG-19. Using the KTH dataset, we collected 6,000 images for training, validation, and testing of our proposed technique. Our research findings indicate that the Hybrid HAR-CNN model, which combines Improved CNN with VGG-19 Net, outperforms individual deep learning models such as Improved CNN and VGG-19 Net.
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