首页> 外文会议>Intelligent Systems Design and Applications, 2009. ISDA '09 >Natural Scene Image Recognition by Fusing Weighted Colour Moments with Bag of Visual Patches on Spatial Pyramid Layout
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Natural Scene Image Recognition by Fusing Weighted Colour Moments with Bag of Visual Patches on Spatial Pyramid Layout

机译:空间金字塔布局上的视觉补丁袋融合加权色彩矩与自然场景图像识别

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The problem of object/scene image classification has gained increasing attention from many researchers in computer vision. In this paper we investigate a number of early fusion methods using a novel approach to combine image colour information and the bag of visual patches (BOP) for recognizing natural scene image categories. We propose keypoints density-based weighting method (KDW) for merging colour moments and the BOP on a spatial pyramid layout. We found that the density of keypoints located in each image sub-region at specific granularity has noticeable impacts on deciding the importance of colour moments on that image sub-region. We demonstrate the validity of our approach on a six categories dataset of natural scene images. Experimental results have proved the effectiveness of our proposed approach.
机译:对象/场景图像分类的问题已引起计算机视觉领域许多研究人员的越来越多的关注。在本文中,我们研究了许多使用新颖方法将图像颜色信息与视觉补丁袋(BOP)组合以识别自然场景图像类别的早期融合方法。我们提出了基于关键点密度的加权方法(KDW),用于在空间金字塔布局上合并色彩矩和BOP。我们发现,以特定的粒度位于每个图像子区域中的关键点的密度对于决定色矩在该图像子区域上的重要性具有明显的影响。我们在自然场景图像的六类数据集上证明了我们方法的有效性。实验结果证明了我们提出的方法的有效性。

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