COMPUTER-AIDED METALS' MICROSTRUCTURE ANALYSIS. A NON-STANDARD APPROACH TO IMAGE ANALYSIS
Abstract and keywords
Abstract (English):
Analysis of metals' microstructure images is an actual quantitative analysis problem, solved by quality control and research labs in the field of metallurgy. SIAMS Ltd pursues the goal of improving microstructure analysis quality, speed, and convenience. This article discusses the issues of recognition of the microstructure elements of metals and alloys, the most common problems and recognition errors, methods for solving them. Microstructure examples are given before and after digital image processing. The question of the advisability of using server technology in digital microscopy that removes such restrictions from users as the size of the shooting area and the area of microstructure analysis, binding to one working computer and one software license, as well as restrictions on the exchange of results between industry experts, will be raised.

Keywords:
digital imaging, segmentation, SIAMS, client-server technologies
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