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Research on feature point extraction and matching machine learning method based on light field imaging

机译:基于光场成像的特征点提取与匹配机学习方法研究

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摘要

At present, there are many methods to realize the matching of specified images with features, and the basic components include image feature point detection, feature description, and image matching. Based on this background, this article has done different research and exploration around these three aspects. The image feature point detection method is firstly studied, which commonly include image edge information-based feature detection method, corner information-based detection method, and various interest operators. However, all of the traditional detection methods are involved in problems of large computation burden and time consumption. In order to solve this problem, a feature detection method based on image grayscale information-FAST operator is used in this paper, which is combined with decision tree theory to effectively improve the speed of extracting image feature points. Then, the feature point description method BRIEF operator is studied, which is a local expression of detected image feature points based on descriptors. Since the descriptor does not have rotation invariance, the detection operator is endowed by a direction that is proposed in this paper, and then the local feature description is conducted on the feature descriptor to generate a binary string array containing direction information. Finally, the feature matching machine learning method is analyzed, and the nearest search method is used to find the nearest feature point pair in Euclidean distance, of which the calculation burden is small. The simulation results show that the proposed nearest neighbor search and matching machine learning algorithm has higher matching accuracy and faster calculation speed compared with the classical feature matching algorithm, which has great advantages in processing a large number of array images captured by the light field camera.
机译:目前,存在许多方法来实现具有特征的特定图像的匹配,并且基本组件包括图像特征点检测,特征描述和图像匹配。基于此背景,本文在这三个方面进行了不同的研究和探索。首先研究了图像特征点检测方法,其通常包括基于图像边缘信息的特征检测方法,基于角信息的检测方法和各种兴趣操作者。然而,所有传统的检测方法都参与了大计算负担和时间消耗的问题。为了解决这个问题,本文使用了一种基于图像灰度信息 - 快速操作员的特征检测方法,其与决策树理论组合以有效提高提取图像特征点的速度。然后,研究了特征点描述方法简要操作员,这是基于描述符的检测到图像特征点的本地表达式。由于描述符没有旋转不变性,因此检测操作员通过本文中提出的方向赋予,然后在特征描述符上进行本地特征描述以生成包含方向信息的二进制串阵列。最后,分析了特征匹配机学习方法,并且最近的搜索方法用于在欧几里德距离中找到最近的特征点对,计算负担很小。仿真结果表明,与经典特征匹配算法相比,所提出的最近邻检验和匹配机学习算法具有更高的匹配精度和更快的计算速度,在处理由光场相机捕获的大量阵列图像时具有很大的优势。

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