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首页> 外文期刊>Advances in Electrical and Computer Engineering >Efficient Shape Classification using Zernike Moments and Geometrical Features on MPEG-7 Dataset
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Efficient Shape Classification using Zernike Moments and Geometrical Features on MPEG-7 Dataset

机译:在MPEG-7数据集上使用Zernike矩和几何特征进行有效的形状分类

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There is an urgent need and demand for manipulating images to extract useful information from them. In every field, whether it is biotechnology, botany, medical, robotics or machinery, the demand for extracting useful aspects of a specific targeted image is growing. Effective systems and applications have been introduced for this purpose CBIR and MPEG-7 are most common applications. Shape extraction and recognition is used in image retrieval and matching. Complex objects can be identified and classified by extracting their shape. This paper proposes an efficient algorithm for shape classification. Analyses are made on MPEG-7 dataset using 1400 images belonging to 70 classes. Zernike Moments descriptor and geometrical features are used for classification purposes. Cross validation and percentage split are used to evaluate the proposed scheme. Experimental results proved the efficiency of the proposed approach with an accuracy of 92.45 percent on the challenging dataset.
机译:迫切需要操纵图像以从图像中提取有用的信息。在每个领域,无论是生物技术,植物学,医学,机器人技术还是机械领域,提取特定目标图像有用方面的需求都在增长。为此,已经引入了有效的系统和应用程序。CBIR和MPEG-7是最常见的应用程序。形状提取和识别用于图像检索和匹配。可以通过提取复杂对象的形状来对其进行识别和分类。本文提出了一种有效的形状分类算法。使用属于70类的1400幅图像对MPEG-7数据集进行分析。 Zernike Moments描述符和几何特征用于分类目的。交叉验证和百分比拆分用于评估提议的方案。实验结果证明了该方法的有效性,在具有挑战性的数据集上的准确率为92.45%。

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