Intelligent recognition system for viewpoint variations on gait and speech using CNN-CapsNet

M. George, N. Lakshmi, Senthil Murugan Nagarajan, R. Mahapatra, V. Muthukumaran, M. Sivaram
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引用次数: 1

Abstract

PurposeThe paper aims to introduce an intelligent recognition system for viewpoint variations of gait and speech. It proposes a convolutional neural network-based capsule network (CNN-CapsNet) model and outlining the performance of the system in recognition of gait and speech variations. The proposed intelligent system mainly focuses on relative spatial hierarchies between gait features in the entities of the image due to translational invariances in sub-sampling and speech variations.Design/methodology/approachThis proposed work CNN-CapsNet is mainly used for automatic learning of feature representations based on CNN and used capsule vectors as neurons to encode all the spatial information of an image by adapting equal variances to change in viewpoint. The proposed study will resolve the discrepancies caused by cofactors and gait recognition between opinions based on a model of CNN-CapsNet.FindingsThis research work provides recognition of signal, biometric-based gait recognition and sound/speech analysis. Empirical evaluations are conducted on three aspects of scenarios, namely fixed-view, cross-view and multi-view conditions. The main parameters for recognition of gait are speed, change in clothes, subjects walking with carrying object and intensity of light.Research limitations/implicationsThe proposed CNN-CapsNet has some limitations when considering for detecting the walking targets from surveillance videos considering multimodal fusion approaches using hardware sensor devices. It can also act as a pre-requisite tool to analyze, identify, detect and verify the malware practices.Practical implicationsThis research work includes for detecting the walking targets from surveillance videos considering multimodal fusion approaches using hardware sensor devices. It can also act as a pre-requisite tool to analyze, identify, detect and verify the malware practices.Originality/valueThis proposed research work proves to be performing better for the recognition of gait and speech when compared with other techniques.
基于CNN-CapsNet的步态和语音视点变化智能识别系统
目的介绍一种步态和语音视点变化的智能识别系统。提出了一种基于卷积神经网络的胶囊网络(CNN-CapsNet)模型,并概述了该系统在识别步态和语音变化方面的性能。所提出的智能系统主要关注图像实体中步态特征之间的相对空间层次,这是由于子采样和语音变化的平移不变性。设计/方法/方法本文提出的工作CNN- capsnet主要用于基于CNN的特征表示的自动学习,并使用胶囊向量作为神经元,通过适应视点变化的相等方差来编码图像的所有空间信息。该研究将基于CNN-CapsNet模型,解决因辅助因素和步态识别引起的意见差异。这项研究工作提供了信号识别、基于生物特征的步态识别和声音/语音分析。从固定视角、交叉视角和多视角三个方面对场景进行了实证评价。步态识别的主要参数有速度、衣着变化、被测者携物行走和光照强度。研究局限/启示在考虑使用硬件传感器设备的多模态融合方法检测监控视频中的行走目标时,所提出的CNN-CapsNet存在一些局限性。它还可以作为分析、识别、检测和验证恶意软件实践的必备工具。实际意义本研究工作包括利用硬件传感器器件考虑多模态融合方法检测监控视频中的行走目标。它还可以作为分析、识别、检测和验证恶意软件实践的必备工具。原创性/价值与其他技术相比,本文提出的研究工作在步态和语音识别方面表现更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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