A FRAMEWORK FOR MORPHOLOGICAL OPERATIONS USING COUNTER HARMONIC MEAN
Journal: Proceedings on Engineering Sciences (Vol.6, No. 4)Publication Date: 2024-12-31
Authors : Savya Sachi D. Ganesh Rajesh Tiwari S. P. Manikanta L. Bhagyalakshmi Ankita Nigam Sanjay Kumar Suman Rajeev Shrivastava;
Page : 1531-1540
Keywords : Mathematical Morphology; Convolutional Neural Networks; On-Line Mastering and Strutting Element;
Abstract
In this article, we have a tendency to embrace a novel framework for learning morphological operations using counter-harmonic mean. It combines the conception of morphology with convolutional neural networks. Similarly, the elemental morphological operators of dilation and erosion, opening and closing, as well as the more refined top-hat transform, for which we disclose a real-world application from the steel industry, are all subjected to a rigorous experimental validation. Our system learns about the structuring element and the operator's composition via online learning and stochastic gradient descent. It works effectively with massive datasets and in online environments.
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Last modified: 2024-12-09 16:30:35