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Design and Implementation of Content-Based Natural Image Retrieval Approach Using Feature Distance

机译:基于内容的自然图像检索方法使用特征距离的设计与实现

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摘要

Generally, the database is a gathering of data that is arranged for simple storage, retrieval and modernize. This data comprises of numerous structures like text, table, and image, outline and chart and so on. Content-based image retrieval (CBIR) is valuable for calculating the huge amount of image databases and records and for distinguishes retrieving similar images. Rather than text-based searching, CBIR effectively recovers images that are similar like query image. CBIR assumes a significant role in various areas including restorative finding, industry estimation, geographical information satellite frameworks (GIS frameworks), and biometrics; online searching and authentic research, etc. Here different medical database images are considered to the CBIR procedure is done by the proposed strategy. The proposed method considers the input features are shape, texture feature, wavelet feature, and SIFT feature. To retrieve the input image based on the features, the suggested method utilizes artificial neural network (ANN) structure. Back-propagation technique, which is an organizational structure for learning is utilized for training the neural network framework. Trial demonstrates that the proposed work improves the results of the retrieval system. From the outcomes minimizes the image retrieval time and maximum Precision 87.3% in distance based ANN process.
机译:通常,数据库是一个用于简单存储,检索和现代化的数据的收集。该数据包括许多结构,如文本,表格和图像,轮廓和图表等。基于内容的图像检索(CBIR)对于计算大量图像数据库和记录以及用于区分检索的类似图像是有价值的。 CBIR而不是基于文本的搜索,CBIR有效地恢复了类似查询图像的图像。 CBIR在各种领域发挥着重要作用,包括恢复性发现,行业估计,地理信息卫星框架(GIS框架)和生物识别学;在线搜索和真实的研究等。这里,不同的医疗数据库图像被认为是CBIR程序由所提出的策略完成。所提出的方法考虑输入功能是形状,纹理功能,小波功能和SIFT功能。为了基于特征检索输入图像,建议的方法利用人工神经网络(ANN)结构。用于培训神经网络框架的支持学习的支持传播技术。试验表明,拟议的工作提高了检索系统的结果。结果,从基于距离的ANN过程中最小化图像检索时间和最大精度87.3%。

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