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Mind your grey tones : examining the influence of decolourization methods on interest point extraction and matching for architectural image-based modelling

机译:注意你的灰色调:检查脱色方法对兴趣点提取和匹配的影响,以建立基于图像的建模

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摘要

This paper investigates the use of different greyscale conversion algorithms to decolourize colour images as input for two Structure-from-Motion (SfM) software packages. Although SfM software commonly works with a wide variety of frame imagery (old and new, colour and greyscale, airborne and terrestrial, large-and small scale), most programs internally convert the source imagery to single-band, greyscale images. This conversion is often assumed to have little, if any, impact on the final outcome. To verify this assumption, this article compares the output of an academic and a commercial SfM software package using seven different collections of architectural images. Besides the conventional 8-bit true-colour JPEG images with embedded sRGB colour profiles, for each of those datasets, 57 greyscale variants were computed with different colour-to-greyscale algorithms. The success rate of specific colour conversion approaches can therefore be compared with the commonly implemented colour-to-greyscale algorithms (luma Y'(601), luma Y'(709), or luminance CIE Y), both in terms of the applied feature extractor as well as of the specific image content (as exemplified by the two different feature descriptors and the various image collections, respectively). Although the differences can be small, the results clearly indicate that certain colour-to-greyscale conversion algorithms in an SfM-workflow constantly perform better than others. Overall, one of the best performing decolourization algorithms turns out to be a newly developed one.
机译:本文研究了如何使用不同的灰度转换算法对彩色图像进行脱色,以作为两个动态结构(SfM)软件包的输入。尽管SfM软件通常可与各种帧图像配合使用(新旧,彩色和灰度,机载和地面,大,小比例),但是大多数程序在内部将源图像转换为单波段,灰度图像。通常认为这种转换对最终结果几乎没有影响。为了验证此假设,本文使用七个不同的建筑图像集合比较了学术和商业SfM软件包的输出。除了具有嵌入式sRGB颜色配置文件的常规8位真彩色JPEG图像外,对于每个数据集,还使用不同的颜色到灰度算法计算了57个灰度变体。因此,就应用特征而言,可以将特定颜色转换方法的成功率与常用的颜色到灰度算法(luma Y'(601),luma Y'(709)或亮度CIE Y)进行比较。提取器以及特定图像内容的提取器(分别以两个不同的特征描述符和各个图像集为例)。尽管差异可能很小,但结果清楚地表明,SfM工作流程中的某些颜色到灰度转换算法的性能始终优于其他算法。总的来说,性能最好的脱色算法之一是新开发的算法。

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