Measuring the Degree of Suitability of Edge Detection Operators Prior to an Application

Abhishek Kesarwani, Kiran Purohit, M. Dalui, D. Kisku
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引用次数: 4

Abstract

Unlike image restoration, image enhancement techniques are found to be subjective in nature as the appearance of an output image depends upon human perception. Hence, it is very difficult to determine the appropriateness of image enhancement techniques including edge detection operators prior to an application. This paper makes use of regression models to determine the suitability of edge detection operators before operators to be executed. With the existing operators, a novel Hybrid technique is used in the evaluation. The Hybrid detector is designed by combining Canny and Sobel operators with the gradient of texton image. This approach estimates a model as an objective function to determine the degree of proximity or suitability of edge detection operators under regression constraints on two publicly available databases, viz. the BSDS300 and the Multi-cue. The experimental results exhibit that the Hybrid edge detector outperforms other operators for measuring the proximity for appropriateness.
在应用程序之前测量边缘检测算子的适合程度
与图像恢复不同,图像增强技术在本质上是主观的,因为输出图像的外观取决于人类的感知。因此,在应用之前,很难确定包括边缘检测算子在内的图像增强技术的适当性。本文利用回归模型在执行算子之前确定边缘检测算子的适用性。在现有算子的基础上,提出了一种新的混合评价方法。将Canny和Sobel算子与文本图像的梯度相结合,设计了混合检测器。该方法将模型估计为目标函数,以确定在两个公开可用数据库(即BSDS300和Multi-cue)的回归约束下边缘检测算子的接近程度或适用性。实验结果表明,混合边缘检测器在测量接近性方面优于其他算子。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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