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Automatic Checkerboard Detection for Robust Camera Calibration

机译:自动棋盘检测,适用于强大的相机校准

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Accurate checkerboard recognition is vital for basic camera calibration in many machine vision tasks. However, existing detectors usually encounter two problems. First, X-corner location precision is easily affected by undesired factors such as noise and distortion. Then, the pattern recovery requires manual input of the dimensions of the real corner matrix, and most recovery schemes can’t deal well with the pattern with occlusion or missing corners. In this paper we propose a novel CNN-based checkerboard detection framework to address these problems. This framework consists of three sub-modules: 1) an X-corner detection network to identify as many real corners as possible. 2) a sub-pixel refinement technique obtained from the geometric analysis of the image response map and grayscale to find precise corner locations. 3) a pattern recovery scheme to find the regular checkerboard layout even with high distortion and partial occlusion. Quantitative experimental results show that the proposed approach has higher accuracy and stronger robustness than state-of-the-art methods to both synthetic images and real-world camera calibration scenarios.
机译:准确的棋盘识别对于许多机器视觉任务中的基本相机校准至关重要。然而,现有的探测器通常遇到两个问题。首先,X角位置精度容易受到噪音和失真等不期望的因素的影响。然后,模式恢复需要手动输入真实角矩阵的尺寸,并且大多数恢复方案不能很好地处理具有遮挡或缺失的角落的模式。在本文中,我们提出了一种基于CNN的CNN的棋盘检测框架来解决这些问题。该框架由三个子模块组成:1)X拐角检测网络,以识别尽可能多的真实角。 2)从图像响应图的几何分析获得的子像素改进技术和灰度,以查找精确的角位置。 3)模式恢复方案,用于找到常规棋盘布局,即使具有高失真和部分闭塞。定量实验结果表明,拟议的方法比综合性图像和现实世界相机校准场景的最先进方法具有更高的准确性和更强的鲁棒性。

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