Improving Feature Point Detection in High Dynamic Range Images

W. Melo, Jusley Arley Oliveira de Tavares, Daniel Oliveira Dantas, Beatriz Trinchão Andrade
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引用次数: 3

Abstract

Feature Point (FP) detection is a fundamental step in computer vision tasks. Although FP detectors are mostly designed to support Low Dynamic Range (LDR) images as input, interest in High Dynamic Range (HDR) images has increased recently due to their higher precision to register overexposed and underexposed areas in an image. As the detection of FPs is strongly dependent on the illumination of the scene, HDR images have the potential to be more robust than LDR images during FP detection. Known FP detectors, however, do not use the full potential of HDR images. In addition, few works have evaluated the performance of HDR images in this context. In this paper, we propose a modification of FP detectors aiming to improve FP detection on HDR images. To this end, we design a local mask based on the Coefficient of Variation (CV) of sets of pixels, creating thus a new step in FP detection. We compare our approach with popular FP detection methods using a standard evaluation metric, Repeatability Rate (RR) of FPs, and also Uniformity as a proposed new criterion. A dataset of images from scenes affected by camera transformations and substantial illumination changes was used as input. Experimental results show that our proposed algorithms give better Uniformity and RR in most HDR images from the dataset when compared to standard FP detectors. Moreover, they indicate that HDR images present a great potential to be explored in applications that rely on FP detection.
改进高动态范围图像的特征点检测
特征点(FP)检测是计算机视觉任务的基本步骤。虽然FP检测器大多设计为支持低动态范围(LDR)图像作为输入,但由于高动态范围(HDR)图像在图像中过度曝光和曝光不足区域的匹配精度更高,因此最近对高动态范围(HDR)图像的兴趣有所增加。由于FPs的检测强烈依赖于场景的照明,因此在FP检测过程中,HDR图像可能比LDR图像更健壮。然而,已知的FP检测器并没有充分利用HDR图像的潜力。此外,很少有作品在这种情况下评估HDR图像的性能。在本文中,我们提出了一种改进的FP检测器,旨在提高对HDR图像的FP检测。为此,我们基于像素集的变异系数(CV)设计了一个局部掩模,从而创建了FP检测的新步骤。我们将我们的方法与流行的FP检测方法进行比较,使用标准评价指标,FPs的重复性率(RR),并将均匀性作为提出的新标准。受相机变换和大量照明变化影响的场景图像数据集被用作输入。实验结果表明,与标准FP检测器相比,我们提出的算法在数据集中的大多数HDR图像中具有更好的均匀性和RR。此外,他们指出HDR图像在依赖FP检测的应用中具有很大的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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