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首页> 外文期刊>Journal of visual communication & image representation >A comparison of interest point and region detectors on structured, range and texture images
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A comparison of interest point and region detectors on structured, range and texture images

机译:比较结构化,范围和纹理图像上的兴趣点和区域检测器

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This article presents an evaluation of the image retrieval and classification potential of local features. Several affine invariant region and scale invariant interest point detectors in combination with well known descriptors were evaluated. Tests on building, range and texture databases were carried out in order to understand the effects of the nature and the variability of the data on the performance of the detectors in terms of their invariance to affine deformations and scale changes. Furthermore, a novel multi-scale edge shape detector, Twin Leaf Regions (TLR) is also proposed using a graph based image decomposition. In TLR, Affine adaptation is avoided in order to reduce the offset from the edges so that pure edges shapes are captured in multiple scales. In the evaluation of building recognition, both homogeneous affine regions (such as Maximally Stable Extremal Regions (MSER)) and corner based detectors (such as Hessian and Harris with both Affine/Laplace variants, SURF with determinant of Hessian based corners and SIFT with difference of Gaussians) acquired more than 90% mean average precision, whereas on range images, homogeneous region detector did not work well. TLR offered good performance than MSER and comparable performance to Harris Affine and Harris Laplace in range image classification and texture retrieval. But its performance was low in building recognition. In general, it was observed that the affine and scale invariance becomes less effective in range and textured images. It is also shown that in a bi-channel approach, combining surface and edge regions (MSER and TLR) boosts the overall performance. Among the descriptors, SIFT and SURF generally offer higher performance but low dimensional descriptors such as Steerable Filters follow closely. (C) 2015 Elsevier Inc. All rights reserved.
机译:本文提出了对图像检索和局部特征分类潜力的评估。结合公知的描述符,评估了几个仿射不变区域和尺度不变兴趣点检测器。对建筑物,范围和纹理数据库进行了测试,以了解数据的性质和可变性对仿射形变和尺度变化的不变性对检测器性能的影响。此外,还提出了使用基于图的图像分解的新型多尺度边缘形状检测器,双叶区域(TLR)。在TLR中,避免仿射自适应,以减少与边缘的偏移,从而以多种比例捕获纯边缘形状。在建筑物识别的评估中,均质仿射区域(例如最大稳定极端区域(MSER))和基于角的检测器(例如具有仿射/拉普拉斯变体的Hessian和Harris,具有基于Hessian角的行列式的SURF和具有差异的SIFT高斯人(Gaussian)的平均平均精度超过90%,而在距离图像上,均质区域检测器效果不佳。 TLR在范围图像分类和纹理检索方面提供了比MSER更好的性能,并且可以与Harris Affine和Harris Laplace媲美。但是它的性能在建立认可度方面很低。通常,观察到仿射和比例不变在范围和纹理图像中变得不太有效。还显示出,在双通道方法中,组合表面区域和边缘区域(MSER和TLR)可提高整体性能。在这些描述符中,SIFT和SURF通常提供更高的性能,但紧随其后的是低维描述符(例如,可控滤波器)。 (C)2015 Elsevier Inc.保留所有权利。

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