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Novel Hybrid Approach to Visual Concept Detection Using Image Annotation

机译:使用图像注释对视觉概念检测的新型混合方法

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Millions of images are being uploaded on the internet without proper description (tags) about these images. Image retrieval based on image tagging approach is much faster than Content Based Image Retrieval (CBIR) approach but requires an entire image collection to be manually annotated with proper tags. This requires a lot of human efforts and time, and hence not feasible for huge image collections. An efficient method is necessary for automatically tagging such a vast collection of images. We propose a novel image tagging method, which automatically tags any image with its concept. Our unique approach to solve this problem involves manual tagging of small exemplar image set and low-level feature extraction of all the images, hence called a hybrid approach. This approach can be used to tag a large image dataset from manually tagged small image dataset. The experiments are performed on Wang's Corel Dataset. In the comparative study, it is found that, the proposed concept detection system based on this novel tagging approach has much less time complexity of classification step, and results in significant improvement in accuracy as compared to the other tagging approaches found in the literature. This approach may be used as faster alternative to the typical Content Based Image Retrieval (CBIR) approach for domain specific applications.
机译:在互联网上上传数百万图像,而不会对这些图像进行适当的描述(标签)。基于图像标记方法的图像检索比基于内容的图像检索(CBIR)方法快得多,但需要一个完整的图像集合用适当的标签手动注释。这需要很多人力努力和时间,因此对于巨大的图像集合而言不可行。有效的方法是自动标记如此广泛的图像集合所必需的。我们提出了一种新颖的图像标记方法,它自动标记其概念的任何图像。我们解决此问题的独特方法涉及手动标记所有图像的小示例性图像集和低级特征提取,因此称为混合方法。此方法可用于从手动标记的小图像数据集标记大图像数据集。实验是在王的Corel DataSet上进行的。在比较研究中,发现基于这种新颖的标记方法的所提出的概念检测系统具有更少的分类步骤的时间复杂程度,并且与文献中发现的其他标记方法相比,精度的显着改善。这种方法可以用作域特定应用程序的典型内容的图像检索(CBIR)方法更快地替代。

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