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Determination of Color and Shape Features Based Image Retrieval with Hybrid Feature Descriptor Construction (HFDC)

机译:使用混合特征描述符构造(HFDC)确定基于颜色和形状特征的图像检索

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Objectives: To implement a hybrid feature descriptor construction (HFDC) model to exercise the CBIR. Method/analysis: The model that combines color and shape features of visual content to produce a feature level fusion scheme is introduced. The RGB histogram, HSV histogram and the canny edge histogram features are extracted and fused to produce a hybrid feature vector. Then the determined feature vector through the fusion of the entire dataset is used to train the SVM using RBF kernel to retrieve relevant visual content through identifying the color distribution, and shape is focused here as the main objective. Since from the very beginning of the data usage to surf web information the classification of the similar related objects has been potentially provided a helpful contribution towards helping the users to identify and determine required knowledge from the large corpus of available digital information. Many algorithms and improvements have been in implementation, but the large quantity of available information provides complexity to these techniques to enhance computational hike. This feature level fusion contributes to reducing the overhead. Finding: The HFDC evolutions significantly contribute to achieving an accuracy of 84.60%. The experimental results have proven the efficiency of the HFDC by providing the maximum classification accuracy. Novelty: The results evidently show that (1) HDFC improve the performance by enhancing the feature level fusion process, (2) the fusion procedure produces increased solid and high indicative rendering and (3) by performing feature level fusion of data a core dictionary is provided for better CBIR performance. Improvement: In addition to color and shape feature fusion the texture features can also be combined to improve the performance significantly.
机译:目标:实施混合特征描述符构建(HFDC)模型以行使CBIR。方法/分析:引入了结合视觉内容的颜色和形状特征以产生特征级融合方案的模型。提取RGB直方图,HSV直方图和Canny Edge直方图特征并将其融合以生成混合特征向量。然后,通过融合整个数据集确定的特征向量将用于使用RBF内核训练SVM,以通过识别颜色分布来检索相关的视觉内容,并且此处将形状作为主要目标。由于从冲浪网络信息的数据使用的最开始就开始,相似的相关对象的分类已潜在地为帮助用户从大量可用数字信息中识别和确定所需的知识提供了有益的贡献。已经实现了许多算法和改进,但是大量可用信息为这些技术提供了复杂性,以增强计算能力。此功能级别融合有助于减少开销。发现:HFDC的演变为实现84.60%的准确度做出了重要贡献。实验结果通过提供最大的分类精度证明了HFDC的效率。新颖性:结果显然表明:(1)HDFC通过增强特征级别融合过程来提高性能,(2)融合过程产生增强的实体和高指示性渲染,(3)通过对核心字典进行数据特征级别融合来实现。提供了更好的CBIR性能。改进:除了融合颜色和形状特征外,还可以结合使用纹理特征以显着提高性能。

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