Due to its role in many computer vision tasks, image matching has been subjected to an active investigation by researchers, which has lead to better and more discriminant feature descriptors and to more robust matching strategies, also thanks to the advent of the deep learning and the increased computational power of the modern hardware. Despite of these achievements, the keypoint extraction process at the base of the image matching pipeline has not seen equivalent progresses. This paper presents HarrisZ$^+$, an upgrade to the HarrisZ corner detector, optimized to synergically take advance of the recent improvements of the other steps of the image matching pipeline. HarrisZ$^+$ does not only consists of a tuning of the setup parameters, but introduces further refinements to the selection criteria delineated by HarrisZ, so providing more, yet discriminative, keypoints, which are better distributed on the image and with higher localization accuracy. The image matching pipeline including HarrisZ$^+$, together with the other modern components, obtained in different recent matching benchmarks state-of-the-art results among the classic image matching pipelines. These results are quite close to those obtained by the more recent fully deep end-to-end trainable approaches and show that there is still a proper margin of improvement that can be granted by the research in classic image matching methods.
翻译:由于其在许多计算机愿景任务中的作用,图像匹配一直受到研究人员的积极调查,从而导致更好和更鲜明的特征描述器和更加有力的匹配战略,这也是由于深入学习的到来和现代硬件计算能力的提高。尽管取得了这些成就,图像匹配管道基础的关键点提取过程没有取得同等进展。本文展示了HarrisZ$(HarrisZ角探测器升级到HarrisZ角探测器),优化地推进了图像匹配管道其他步骤的最新改进。HarrisZ$(HarrisZ$)不仅包括调整设置参数,而且对HarrisZ(HarrisZ)界定的选择标准作了进一步的改进,从而提供了更多、但又是歧视性的、关键点,这些点在图像上分布得更好,而且地方化的准确性更高。包括HarrisZ$(HarrisZ$)和其他现代部件的匹配管道,在最近不同匹配的图像匹配管道中,以最先进的基准取得了最佳结果。这些结果仍然非常接近于最近通过更深层的模型改进方法获得的结果,通过适当的模型展示了最新获得的改进。