Content based video classification using fuzzy rule base for edge detection

V. Katkar, D. Bhatia, Siddhant Kulkarni
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引用次数: 1

Abstract

Multimedia sharing has become a recent trend over the Internet among which videos are an integral part. In order to handle such large amount of video data, classification techniques are necessary. This paper provides a video classification technique which uses a Fuzzy rule base to calculate a fuzzy measure `Edginess' for each pixel. Differences in pixel intensity are calculated and compared with a fuzzy rule base to calculate edginess. This edginess measure is used to decide whether a pixel belongs to an edge or not. Features extracted from training videos train the Naive Bayesian Classifier which is then used for testing videos. Features are pre-processed using techniques such as Discretize, Fuzzy Logic, Numeric to Binary, PKI Discretize and Normalize. Then, they are filtered using Correlation Feature Selection before training the classifier. Experimental Results show that a high accuracy of classification can be achieved with Fuzzy edge detection technique.
基于内容的视频分类,利用模糊规则库进行边缘检测
多媒体共享已成为互联网上的一种新趋势,视频是其中不可或缺的一部分。为了处理如此大量的视频数据,分类技术是必要的。本文提出了一种视频分类技术,该技术使用模糊规则库计算每个像素的模糊度量“边缘度”。计算像素强度的差异,并与模糊规则库进行比较,以计算边缘度。这种边缘度量用于确定像素是否属于边缘。从训练视频中提取的特征训练朴素贝叶斯分类器,然后用于测试视频。使用诸如离散化、模糊逻辑、数字到二进制、PKI离散化和规范化等技术对特征进行预处理。然后,在训练分类器之前,使用相关特征选择对它们进行过滤。实验结果表明,模糊边缘检测技术可以达到较高的分类精度。
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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