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A Genesis of a Meticulous Fusion based Color Descriptor to Analyze the Supremacy between Machine Learning and Deep learning

机译:基于细微融合的颜色描述符的成因分析机器学习与深度学习的至高无上

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The tremendous advancements in digital technology pertaining to diverse application areas like medical diagnostics, crime detection, defense etc., has led to an exceptional increase in the multimedia image content. This bears an acute requirement of an effectual retrieval system to cope up with the human demands. Therefore, Content-based image retrieval (CBIR) is among the renowned retrieval systems which uses color, texture, shape, edge and other spatial information to extract the basic image features. This paper proposes an efficient and unexcelled hybrid color descriptor which is an amalgamation of color histogram, color moment and color auto-correlogram. In order to determine the predominance between machine learning and deep learning, two machine learning models, Support vector machine (SVM) and Extreme learning machine (ELM) have been tested. Whereas from deep learning category, Cascade forward back propagation neural network (CFBPNN) and Patternnet have been utilized. Finally, from these divergent tested algorithms, CFBPNN attains the highest accuracy and has been selected to enhance the retrieval accuracy of the proposed system. Numerous standard benchmark datasets namely Corel-1K, Corel-5K, Corel-10K, Oxford flower, Coil-100 and Zurich buildings have been tested here and average precision of 97.1%, 90.3%, 87.9%, 98.4%, 98.9% and 82.7% is obtained respectively which is significantly higher than many state-of-the-art related techniques.
机译:与医疗诊断,犯罪检测,防御等等多种应用领域有关的数字技术的巨大进步导致多媒体图像内容的特殊增加。这对有效的检索系统进行了急性要求,以应对人类需求。因此,基于内容的图像检索(CBIR)是使用颜色,纹理,形状,边缘和其他空间信息来提取基本图像特征的着名检索系统之一。本文提出了一种高效且未开发的混合色彩描述符,其是颜色直方图,颜色矩和颜色自动相关的胺。为了确定机器学习和深度学习之间的优势,已经测试了两种机器学习模型,支持向量机(SVM)和极端学习机(ELM)。从深度学习类别中,已经利用了级联前后传播神经网络(CFBPNN)和图案网络。最后,从这些分歧测试算法中,CFBPNN达到最高精度,并选择了提高所提出的系统的检索精度。众多标准基准数据集即Corel-1K,Corel-5K,Corel-10K,牛津花,线圈100和苏明建筑物已经在此测试,平均精度为97.1%,90.3%,87.9%,98.4%,98.9%和82.7分别获得%,其显着高于许多最先进的相关技术。

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