基于集成学习和群的视频事件识别分割框架

IF 1.2 4区 地球科学 Q3 GEOCHEMISTRY & GEOPHYSICS
R. Kavitha, D. Chitra, N. Priyadharsini, A. Kaliappan
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引用次数: 0

摘要

视频事件识别旨在从视频中识别事件的时空视觉模式。近年来,事件识别引起了学术界和工业界越来越多的关注。在监控视频中识别事件仍然具有相当大的挑战性,很大程度上是由于视觉外观差异、目标运动变化、视点变化和时间变化导致的类内事件的巨大变化。现有系统针对视频事件识别中的广义最大团问题设计了极限学习机和动作识别算法。实现的系统为视频事件识别设计了一个增强的集成深度学习和基于群的分割框架。所提出的集成框架不仅减少了单一模型带来的信息丢失和过拟合问题。首先,将视频帧作为输入,并从中提取最重要的信息。利用特征编码的VLAD进行特征编码。分割过程采用基于随机惯性权重的粒子群优化算法(RIWPSO),利用连续帧在简单特征空间中进行模式匹配。然后,基于每个SVM和Elman递归神经网络(ERNN)分类器在每个特征集上的性能,开发了一个集成学习(EL)。仿真结果表明,与现有方法相比,所实现的增强集成深度学习技术在视频事件识别中的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Ensemble Learning and Swarm Based Segmentation Framework for Video Event Recognition
Video event recognition aims to recognize the spatiotemporal visual patterns of events from videos. In recent years, event recognition has attracted growing interest from both academia and industry. Recognizing events in surveillance videos is still quite challenging, largely due to the tremendous intra class variations of events caused by visual appearance differences, target motion variations, viewpoint change and temporal variability. The existing system designed an extreme learning machine and action recognition algorithm for generalized maximum clique problem in video event recognition. The implemented system designed an enhanced ensemble deep learning and swarm based segmentation framework for video event recognition. The presented ensemble framework in that not only decreases the information loss and overfitting problems caused by single models. Initially, a video frames are taken as an input and most salient information extract from it. The VLAD for feature encoding is utilized for feature encoding. The segmentation process is done with the help of Random Inertia Weight based Particle Swarm Optimization (RIWPSO) of successive frames are exploited for pattern matching in a simple feature space. Thereafter, an Ensemble Learning (EL) is developed based on the performance of each SVM and Elman Recurrent Neural Network (ERNN) classifier on each feature set. Thus the simulation results demonstrate the effectiveness of the implemented enhanced ensemble deep learning technique for video event recognition compare to the existing methods.
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来源期刊
Periodico Di Mineralogia
Periodico Di Mineralogia 地学-地球化学与地球物理
CiteScore
1.50
自引率
14.30%
发文量
0
审稿时长
>12 weeks
期刊介绍: Periodico di Mineralogia is an international peer-reviewed Open Access journal publishing Research Articles, Letters and Reviews in Mineralogy, Crystallography, Geochemistry, Ore Deposits, Petrology, Volcanology and applied topics on Environment, Archaeometry and Cultural Heritage. The journal aims at encouraging scientists to publish their experimental and theoretical results in as much detail as possible. Accordingly, there is no restriction on article length. Additional data may be hosted on the web sites as Supplementary Information. The journal does not have article submission and processing charges. Colour is free of charges both on line and printed and no Open Access fees are requested. Short publication time is assured. Periodico di Mineralogia is property of Sapienza Università di Roma and is published, both online and printed, three times a year.
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