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首页> 外文期刊>Indian Journal of Science and Technology >An Efficient Image Retrieval Scheme for Sketches using Fish Swarm Optimization with the Aid of Optimal Score Level Fusion
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An Efficient Image Retrieval Scheme for Sketches using Fish Swarm Optimization with the Aid of Optimal Score Level Fusion

机译:使用鱼群优化和最佳分数水平融合的草图的有效图像检索方案

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Objectives: Image retrieval is system software for browsing, examining and retrieving images from a large database of images. Images and sketches do not share numerous common modalities. Hence, Sketch to Image Retrieval is a tedious task in image processing. Sketch image retrieval focuses on the hand-drawn query and retrieves the similar images from a large database which is useful for further processing.Methods/Statistical Analysis:In the, most of the traditional/conventional image processing techniques considered edges and outlines for image retrieval. In this paper, a new methodology is developed by fusion of Edge Histogram Descriptors, Histogram of oriented gradients, Scale Invariant Feature Transform (SIFT) and Speeded up Robust Features (SURF). In the proposed model first feature Extraction is carried out and Euclidian distance is calculated amongst the query sketch and innovative image. Formerly the feature vectors are provided to the score level fusion stage, and then they obtained results are optimized. For optimization, Fish Swarm Optimization (FSO) is employed in the proposed method. Findings: The performance of the proposed method is evaluated through Benchmark sketch image database. Also, the attained results are compared with the existing evolutionary algorithm Genetic Algorithm (GA). Application/ Improvement: The experimental results showed that the projected method with FSO yields better results than GA.
机译:目标:图像检索是用于从大型图像数据库中浏览,检查和检索图像的系统软件。图像和草图没有共享许多共同的形式。因此,草图到图像检索在图像处理中是一项繁琐的任务。草图图像检索侧重于手绘查询,并从大型数据库中检索相似的图像,这对进一步的处理很有用。方法/统计分析:在大多数传统/传统图像处理技术中,图像的检索都考虑了边缘和轮廓。本文通过融合边缘直方图描述符,定向梯度直方图,尺度不变特征变换(SIFT)和加速鲁棒特征(SURF),开发了一种新方法。在提出的模型中,首先进行特征提取,并在查询草图和创新图像之间计算欧几里得距离。以前,将特征向量提供给分数级别融合阶段,然后对获得的结果进行优化。为了进行优化,在所提出的方法中采用了鱼群优化(FSO)。结果:通过Benchmark草图图像数据库评估了该方法的性能。此外,将获得的结果与现有的进化算法遗传算法(GA)进行比较。应用/改进:实验结果表明,采用FSO的投影方法比GA效果更好。

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