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MSFD: Multi-Scale Segmentation-Based Feature Detection for Wide-Baseline Scene Reconstruction

机译:MSFD:用于宽基线场景重建的基于多尺度分割的特征检测

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摘要

A common problem in wide-baseline matching is the sparse and non-uniform distribution of correspondences when using conventional detectors, such as SIFT, SURF, FAST, A-KAZE, and MSER. In this paper, we introduce a novel segmentation-based feature detector (SFD) that produces an increased number of accurate features for wide-baseline matching. A multi-scale SFD is proposed using bilateral image decomposition to produce a large number of scale-invariant features for wide-baseline reconstruction. All input images are over-segmented into regions using any existing segmentation technique, such as Watershed, Mean-shift, and simple linear iterative clustering. Feature points are then detected at the intersection of the boundaries of three or more regions. The detected feature points are local maxima of the image function. The key advantage of feature detection based on segmentation is that it does not require global threshold setting and can, therefore, detect features throughout the image. A comprehensive evaluation demonstrates that SFD gives an increased number of features that are accurately localized and matched between wide-baseline camera views; the number of features for a given matching error increases by a factor of 3-5 compared with SIFT; feature detection and matching performance are maintained with increasing baseline between views; multi-scale SFD improves matching performance at varying scales. Application of SFD to sparse multi-view wide-baseline reconstruction demonstrates a factor of 10 increases in the number of reconstructed points with improved scene coverage compared with SIFT/MSER/A-KAZE. Evaluation against ground-truth shows that SFD produces an increased number of wide-baseline matches with a reduced error.
机译:宽基线匹配中的一个常见问题是使用常规检测器(如SIFT,SURF,FAST,A-KAZE和MSER)时对应关系的稀疏和不均匀分布。在本文中,我们介绍了一种新颖的基于分段的特征检测器(SFD),该检测器可为宽基线匹配产生数量更多的精确特征。提出了一种利用双边图像分解产生大量尺度不变特征的宽尺度SFD,用于宽基线重建。使用任何现有的分割技术(例如分水岭,均值平移和简单的线性迭代聚类)将所有输入图像过度分割成区域。然后在三个或更多区域边界的交点处检测特征点。检测到的特征点是图像功能的局部最大值。基于分割的特征检测的主要优势在于它不需要全局阈值设置,因此可以在整个图像中检测特征。全面的评估表明,SFD提供了数量更多的功能,这些功能可以在宽基线相机视图之间精确定位和匹配;与SIFT相比,给定匹配误差的特征数量增加了3-5倍;随着视图之间基线的增加,可以保持特征检测和匹配性能;多尺度SFD改善了不同尺度下的匹配性能。 SFD在稀疏多视图宽基线重建中的应用表明,与SIFT / MSER / A-KAZE相比,具有改善的场景覆盖率的重建点数增加了10倍。对事实的评估表明,SFD可以产生更多的宽基线匹配,且误差减少。

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