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An effective content-based image retrieval technique for image visuals representation based on the bag-of-visual-words model

机译:基于视觉袋模型的基于内容的有效图像检索技术

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摘要

For the last three decades, content-based image retrieval (CBIR) has been an active research area, representing a viable solution for retrieving similar images from an image repository. In this article, we propose a novel CBIR technique based on the visual words fusion of speeded-up robust features (SURF) and fast retina keypoint (FREAK) feature descriptors. SURF is a sparse descriptor whereas FREAK is a dense descriptor. Moreover, SURF is a scale and rotation-invariant descriptor that performs better in the case of repeatability, distinctiveness, and robustness. It is robust to noise, detection errors, geometric, and photometric deformations. It also performs better at low illumination within an image as compared to the FREAK descriptor. In contrast, FREAK is a retina-inspired speedy descriptor that performs better for classification-based problems as compared to the SURF descriptor. Experimental results show that the proposed technique based on the visual words fusion of SURF-FREAK descriptors combines the features of both descriptors and resolves the aforementioned issues. The qualitative and quantitative analysis performed on three image collections, namely Corel-1000, Corel-1500, and Caltech-256, shows that proposed technique based on visual words fusion significantly improved the performance of the CBIR as compared to the feature fusion of both descriptors and state-of-the-art image retrieval techniques.
机译:在过去的三十年中,基于内容的图像检索(CBIR)一直是活跃的研究领域,代表了一种从图像存储库中检索相似图像的可行解决方案。在本文中,我们提出了一种基于加速健壮特征(SURF)和快速视网膜关键点(FREAK)特征描述符的视觉单词融合的新颖CBIR技术。 SURF是稀疏描述符,而FREAK是密集描述符。而且,SURF是一个尺度和旋转不变的描述符,在可重复性,独特性和鲁棒性方面表现更好。它对噪声,检测误差,几何形状和光度学变形具有鲁棒性。与FREAK描述子相比,它在图像低照度下的性能也更好。相比之下,与SURF描述符相比,FREAK是受视网膜启发的快速描述符,在基于分类的问题上表现更好。实验结果表明,基于SURF-FREAK描述符的视觉词融合的拟议技术融合了两个描述符的特征,解决了上述问题。对Corel-1000,Corel-1500和Caltech-256这三个图像集进行的定性和定量分析表明,与两个描述符的特征融合相比,基于视觉单词融合的拟议技术显着提高了CBIR的性能。和最新的图像检索技术。

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