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A New Algorithm for Local Blur-Scale Computation and Edge Detection

机译:一种新的局部模糊计算和边缘检测算法

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Precise and efficient object boundary detection is the key for successful accomplishment of many imaging applications involving object segmentation or recognition. Blur-scale at a given image location represents the transition-width of the local object interface. Hence, the knowledge of blur-scale is crucial for accurate edge detection and object segmentation. In this paper, we present new theory and algorithms for computing local blur-scales and apply it for scale-based gradient computation and edge detection. The new blur-scale computation method is based on our observation that gradients inside a blur-scale region follow a Gaussian distribution with non-zero mean. New statistical criteria using maximal likelihood functions are established and applied for local blur-scale computation. Gradient vectors over a blur-scale region are summed to enhance gradients at blurred object interfaces while leaving gradients at sharp transitions unaffected. Finally, a blur-scale based non-maxima suppression method is developed for edge detection. The method has been applied to both natural and phantom images. Experimental results show that computed blur-scales capture true blur extents at individual image locations. Also, the new scale-based gradient computation and edge detection algorithms successfully detect gradients and edges, especially at the blurred object interfaces.
机译:精确高效的对象边界检测是成功完成涉及对象分割或识别的许多成像应用的关键。给定图像位置的模糊尺度表示本地对象接口的转换宽度。因此,模糊量表的知识对于精确的边缘检测和对象分割是至关重要的。在本文中,我们提供了用于计算本地模糊尺度的新理论和算法,并将其应用于基于比例的梯度计算和边缘检测。新的模糊计算方法基于我们观察,即模糊尺度区域内的梯度遵循具有非零平均值的高斯分布。建立使用最大似函数的新统计标准,并应用于本地模糊计算。在模糊区域上的梯度向量总结为增强模糊物体接口的梯度,同时在不受影响的尖锐过渡处离开梯度。最后,为边缘检测开发了基于模糊的非最大值抑制方法。该方法已应用于自然和幻像图像。实验结果表明,计算的模糊尺度在单个图像位置捕获真正的模糊范围。此外,基于尺度的梯度计算和边缘检测算法成功地检测梯度和边缘,尤其是模糊的对象接口。

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