DFM: A Performance Baseline for Deep Feature Matching

Ufuk Efe, K. G. Ince, A. Alatan
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引用次数: 28

Abstract

A novel image matching method is proposed that utilizes learned features extracted by an off-the-shelf deep neural network to obtain a promising performance. The proposed method uses pre-trained VGG architecture as a feature extractor and does not require any additional training specific to improve matching. Inspired by well-established concepts in the psychology area, such as the Mental Rotation paradigm, an initial warping is performed as a result of a preliminary geometric transformation estimate. These estimates are simply based on dense matching of nearest neighbors at the terminal layer of VGG network outputs of the images to be matched. After this initial alignment, the same approach is repeated again between reference and aligned images in a hierarchical manner to reach a good localization and matching performance. Our algorithm achieves 0.57 and 0.80 overall scores in terms of Mean Matching Accuracy (MMA) for 1 pixel and 2 pixels thresholds respectively on Hpatches dataset [4], which indicates a better performance than the state-of-the-art.
深度特征匹配的性能基准
提出了一种新的图像匹配方法,利用现成的深度神经网络提取的学习特征来获得良好的图像匹配效果。该方法使用预训练的VGG结构作为特征提取器,不需要任何额外的训练来提高匹配。受心理学领域成熟概念的启发,如心理旋转范式,初始翘曲是作为初步几何变换估计的结果执行的。这些估计仅仅是基于待匹配图像的VGG网络输出终端层最近邻的密集匹配。在初始对齐之后,在参考图像和对齐图像之间以分层方式重复相同的方法,以达到良好的定位和匹配性能。在Hpatches数据集[4]上,我们的算法在1像素和2像素阈值下的平均匹配精度(Mean Matching Accuracy, MMA)得分分别为0.57和0.80,比目前的性能更好。
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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