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Novel Relevance Feedback Approach for Color Trademark Recognition Using Optimization and Learning Strategy

机译:使用优化和学习策略进行彩色商标识别的新型相关反馈方法

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摘要

The trademark registration process, apparent in all organizations nowadays, deals with recognition and retrieval of similar trademark images from trademark databases. Trademark retrieval is an imperative application area of content-based image retrieval. The main challenges in designing and developing this application area are reducing the semantic gap, obtaining higher accuracy, reducing computation complexity, and subsequently the execution time. The proposed work focuses on these challenges. This paper proposes the relevance feedback system embedded with optimization and unsupervised learning technique as the preprocessing stage, for trademark recognition. The search space is reduced by using particle swam optimization, for optimization of database feature set, which is further followed by clustering using self-organizing map. The relevance feedback technique is implemented over this preprocessed feature set. Experimentation is done using the FlickrLogos-32 PLUS dataset. To introduce variations between the training and query images, transformations are applied to each of the query image, viz. rotation, scaling, and translation of the image. The same query image is tested for various combinations of transformations. The proposed technique is invariant to various transformations, with significant performance as depicted in the results.
机译:现在在所有组织中表明商标注册过程,涉及来自商标数据库的类似商标图像的认可和检索。商标检索是基于内容的图像检索的命令应用领域。设计和开发该应用区域的主要挑战正在降低语义差距,获得更高的准确性,降低计算复杂性,并随后执行时间。拟议的工作侧重于这些挑战。本文提出了具有优化和无监督学习技术的相关反馈系统作为预处理阶段,用于商标识别。通过使用粒子SAM优化来减少搜索空间,以便优化数据库功能集,这进一步使用自组织地图进行聚类。相关性反馈技术通过该预处理功能集实现。使用Flickrlogos-32 Plus DataSet进行实验。为了在训练和查询图像之间引入变体,将转换应用于每个查询映像,viz。旋转,缩放和图像的翻译。测试相同的查询图像以获得各种转换组合。所提出的技术对各种变换不变,具有显着性能,如结果所示。

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