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Robust line extraction based on repeated segment directions on image contours

机译:基于图像轮廓上的重复片段方向的稳健线提取

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This paper describes a new line segment detection and extraction algorithm for computer vision, image segmentation, and shape recognition applications. This is an important pre processing step in detecting, recognizing and classifying military hardware in images. This algorithm uses a compilation of different image processing steps such as normalization, Gaussian smooth, thresholding, and Laplace edge detection to extract edge contours from colour input images. Contours of each connected component are divided into short segments, which are classified by their orientation into nine discrete categories. Straight lines are recognized as the minimal number of such consecutive short segments with the same direction. This solution gives us a surprisingly more accurate, faster and simpler answer with fewer parameters than the widely used Hough Transform algorithm for detecting lines segments among any orientation and location inside images. Its easy implementation, simplicity, speed, the ability to divide an edge into straight line segments using the actual morphology of objects, inclusion of endpoint information, and the use of the OpenCV library are key features and advantages of this solution procedure. The algorithm was tested on several simple shape images as well as real pictures giving more accuracy than the actual procedures based in Hough Transform. This line detection algorithm is robust to image transformations such as rotation, scaling and translation, and to the selection of parameter values.
机译:本文介绍了一种适用于计算机视觉,图像分割和形状识别应用的新线段检测和提取算法。这是检测,识别和分类图像中的军事硬件的重要预处理步骤。该算法使用不同图像处理步骤(例如归一化,高斯平滑,阈值和拉普拉斯边缘检测)的汇编来从彩色输入图像中提取边缘轮廓。每个连接的组件的轮廓分为短段,按其方向分为九个离散类别。直线被视为具有相同方向的此类连续短段的最小数量。与广泛使用的霍夫变换算法相比,与用于检测图像内部任何方向和位置的线段相比,该解决方案以更少的参数为我们提供了令人惊讶的更准确,更快,更简单的答案。该解决方案过程的关键特征和优点是其易于实现,简单,快速,使用对象的实际形态将边缘划分为直线段,包含端点信息以及使用OpenCV库的能力。该算法在几个简单的形状图像以及真实图片上进行了测试,比基于Hough变换的实际过程具有更高的准确性。这种线检测算法对于图像转换(例如旋转,缩放和平移)以及参数值的选择具有鲁棒性。

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