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A Hough transform based line recognition method utilizing both parameter space and image space

机译:同时利用参数空间和图像空间的基于Hough变换的线识别方法

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Hough Transform (HT) is recognized as a powerful tool for graphic element extraction from images due to its global vision and robustness in noisy or degraded environment. However, the application of HT has been limited to small-size image's for a long time. Besides the well-known heavy computation in the accumulation. the peak detection and the line verification become much more time-consuming for large-size images. Another limitation is that most existing HT-based line recognition methods are not able to detect line thickness, which is essential to large-size images. usually engineering drawings. We believe these limitations arise from that these methods only work on the HT parameter space. This Paper therefore proposes a new HT-based line recognition method, which utilizes both the HT parameter space and the image space. The proposed method devises an image-based gradient prediction to accelerate the accumulation, introduces a boundary recorder to eliminate redundant analyses in the line verification, and develops an image-based line verification algorithm to detect line thickness and reduce false detections as well. It also proposes to use pixel removal to avoid overlapping lines instead of rigidly suppressing the N x N neighborhood. We perform experiments on real images with different sizes in terms of speed and detection accuracy. The experimental results demonstrate the significant performance improvement, especially for lame-size images. (C) 2004 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:Hough变换(HT)由于具有全局视野和在嘈杂或退化环境中的鲁棒性,因此被认为是从图像中提取图形元素的强大工具。然而,HT的应用长期以来一直局限于小尺寸的图像。除了在计算中众所周知的繁重计算。对于大尺寸图像,峰值检测和线验证变得更加耗时。另一个限制是,大多数现有的基于HT的线识别方法无法检测线宽,这对于大尺寸图像至关重要。通常是工程图。我们认为这些局限性是由于这些方法仅适用于HT参数空间。因此,本文提出了一种新的基于HT的线识别方法,该方法同时利用了HT参数空间和图像空间。提出的方法设计了基于图像的梯度预测以加速累积,引入边界记录器以消除线验证中的多余分析,并开发了基于图像的线验证算法来检测线宽并减少错误检测。还提出使用像素去除来避免线重叠,而不是严格地抑制N×N邻域。我们在速度和检测精度方面对具有不同大小的真实图像进行实验。实验结果证明了性能的显着提高,尤其是对于la足大小的图像。 (C)2004模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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