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RSILC: Rotation- and Scale-Invariant, Line-based Color-aware descriptor

机译:RSILC:旋转和缩放不变,基于行的颜色感知描述符

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摘要

Modern appearance-based object recognition systems typically involve feature/descriptor extraction and matching stages. The extracted descriptors are expected to be robust to illumination changes and to reasonable (rigid or affine) image/object transformations. Some descriptors work well for general object matching, but gray-scale key-point-based methods may be suboptimal for matching line-rich color scenes/objects such as cars, buildings, and faces. We present a Rotation- and Scale-Invariant, Line-based Color-aware descriptor (RSILC), which allows matching of objects/scenes in terms of their key-lines, line-region properties, and line spatial arrangements. An important special application is face matching, since face characteristics are best captured by lines/curves. We tested RSILC performance on publicly available datasets and compared it with other descriptors. Our experiments show that RSILC is more accurate in line-rich object description than other well-known generic object descriptors. (C) 2015 Elsevier B.V. All rights reserved.
机译:基于现代外观的对象识别系统通常涉及特征/描述符提取和匹配阶段。期望提取的描述符对于照明变化和合理的(刚性或仿射)图像/物体变换具有鲁棒性。一些描述符对于一般的对象匹配效果很好,但是基于灰度关键点的方法对于匹配线条丰富的彩色场景/对象(例如汽车,建筑物和面部)可能不是最佳的。我们提出了一种旋转和缩放不变的基于行的颜色感知描述符(RSILC),该描述符允许根据其关键线,行区域属性和行空间布置来匹配对象/场景。一个重要的特殊应用是人脸匹配,因为人脸特征最好通过线条/曲线来捕捉。我们在公开可用的数据集上测试了RSILC性能,并将其与其他描述符进行了比较。我们的实验表明RSILC在行丰富的对象描述中比其他众所周知的通用对象描述符更准确。 (C)2015 Elsevier B.V.保留所有权利。

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