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Adaptive Hough transform for the detection of natural shapes under weak affine transformations

机译:自适应霍夫变换用于弱仿射变换下自然形状的检测

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This paper introduces a two-steps adaptive generalized Hough transform (GHT) for the detection of non-analytic objects undergoing weak affine transformations in images. The first step of our algorithm coarsely locates the region of interest with a GHT for similitudes. The returned detection is then used by an adaptive GHT for affine transformations. The adaptive strategy makes the computation more amenable and ensures high accuracy, while keeping the size of the accumulator array small. To account for the deformable nature of natural objects, local shape variability is incorporated into the algorithm in both the detection and reconstruction steps. Finally, experiments are performed on real medical data showing that both accuracy and reasonable computation times can be reached.
机译:本文介绍了一种两步自适应广义霍夫变换(GHT),用于检测图像中经历弱仿射变换的非分析对象。我们算法的第一步是使用相似的GHT粗略地定位感兴趣的区域。然后,返回的检测值将由自适应GHT用于仿射变换。自适应策略使计算更加顺畅,并确保了高精度,同时保持了累加器阵列的尺寸较小。为了考虑自然物体的可变形性,在检测和重建步骤中将局部形状可变性纳入算法中。最后,对真实医学数据进行实验,表明可以达到准确性和合理的计算时间。

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