Intelligent edge detector based on multiple edge maps

M. Qasim, W. Woon, Z. Aung, V. Khadkikar
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引用次数: 6

Abstract

An intelligent edge detection method is proposed. The method is based on the use of pattern recognition and machine learning techniques to combine the outputs of multiple edge detection algorithms. In this way, the limitations of the individual edge detectors can be overcome and performance enhancement is achieved. Two widely used classification algorithms, the Naive Bayes Classifier and the Multi-layer Perceptron, were selected for the learning task. The proposed system was evaluated on artificial and real images. A simple class labeling system based on the output of all edge detectors is suggested to provide controllability between detection sensitivity and noise resistance. Principal Component Analysis was performed to reduce computational burden and improve detection accuracy. The method is shown to achieve a practical compromise between detection sensitivity, computational complexity, and noise immunity.
基于多边缘映射的智能边缘检测器
提出了一种智能边缘检测方法。该方法基于使用模式识别和机器学习技术来组合多个边缘检测算法的输出。通过这种方法,可以克服单个边缘检测器的局限性,从而实现性能的提高。两种广泛使用的分类算法,朴素贝叶斯分类器和多层感知器,被选择用于学习任务。在人工图像和真实图像上对该系统进行了评价。提出了一种基于所有边缘检测器输出的简单类标记系统,以提供检测灵敏度和抗噪声之间的可控性。主成分分析减少了计算量,提高了检测精度。结果表明,该方法在检测灵敏度、计算复杂度和抗噪性之间实现了折衷。
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