在工程和教育领域未来专家的专业培训中使用智能模糊图像分割系统

Олександр Деревянчук
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摘要

相关性:文章探讨了将利用模糊逻辑的智能图像分割系统纳入未来工程和教学领域专家培训过程的关键问题。这种整合是高等教育数字化的一个重要方面。目的:目标是利用模糊逻辑实施智能车辆图像分割系统,以培训工程和教学领域的专家:对研究对象(车辆)图像的初步处理包括数字滤波方法、轮廓检测、轮廓分析和对比度增强。使用分水岭方法、轮廓线和区域生长进行图像分割。分割后,根据大小选择所获得的片段。然后应用模糊成员函数来确定这些片段与所研究对象有意义部分的隶属程度,从而确保可靠识别这些部分,并确保智能系统在获取的图像受到外部影响时仍能稳定运行:已开发出一套利用模糊逻辑对车辆图像进行分割的计算机系统,该系统已纳入工程和教学领域专家的培训中。分割方法可将图像中的物体分离出来,然后利用模糊逻辑对其进行识别。由于采用了模糊成员函数,即使在分割形状模糊不清的情况下,也能可靠地识别车辆图像中的元素。通过对汽车图像的处理,证明了所开发系统的实际意义:结论:将所开发的系统融入教学过程,可为学生提供与智能图像处理系统相关的理论知识和实践技能。
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USE OF INTELLIGENT FUZZY IMAGE SEGMENTATION SYSTEMS IN THE PROFESSIONAL TRAINING OF FUTURE SPECIALISTS IN ENGINEERING AND PEDAGOGICAL FIELDS
Relevance: The article addresses the critical issue of integrating intelligent image segmentation systems that utilize fuzzy logic into the training processes for future specialists in engineering and pedagogical fields. This integration is a significant aspect of the digitization of higher education. Aim: The goal is to implement intelligent vehicle image segmentation systems using fuzzy logic to train specialists in engineering and pedagogical fields. Methods: The preliminary processing of the images of the studied objects (vehicles) involved digital filtering methods, contour detection, profile analysis, and contrast enhancement. Image segmentation was performed using watershed methods, contour lines, and region growing. After segmentation, the obtained segments were selected based on size. Fuzzy membership functions were then applied to determine the degree of affiliation of the segments to the meaningful parts of the studied objects, ensuring reliable recognition of these parts and stable operation of the intelligent system despite external influences on the acquired images. Results: A computer system has been developed for the segmentation of vehicle images using fuzzy logic, which has been integrated into the training of specialists in engineering and pedagogical fields. The segmentation methods isolate objects within the images, which are then recognized using fuzzy logic. Thanks to the fuzzy membership functions, elements of vehicle images are reliably recognized even when there is some ambiguity in the shapes of the segments. The practical significance of the developed system is demonstrated through the processing of car images. Conclusions: The integration of the developed system into the educational process provides students with both theoretical knowledge and practical skills related to intelligent image processing systems.
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USE OF INTELLIGENT FUZZY IMAGE SEGMENTATION SYSTEMS IN THE PROFESSIONAL TRAINING OF FUTURE SPECIALISTS IN ENGINEERING AND PEDAGOGICAL FIELDS PROBLEMS AND PROSPECTS FOR THE DEVELOPMENT OF DUAL EDUCATION FOR THE POST-WAR RECOVERY OF UKRAINE METHODICAL SYSTEM FOR THE PEDAGOGICAL EXCELLENCE DEVELOPMENT OF GENERAL EDUCATION TEACHERS OF VOCATIONAL EDUCATION INSTITUTIONS MODERN MECHANISMS FOR THE DEVELOPMENT OF PUBLIC-PRIVATE PARTNERSHIPS IN VOCATIONAL (VOCATIONAL AND TECHNICAL) EDUCATION IN THE POST-WAR PERIOD MODERN MECHANISMS FOR THE DEVELOPMENT OF PUBLIC-PRIVATE PARTNERSHIPS IN VOCATIONAL (VOCATIONAL AND TECHNICAL) EDUCATION IN THE POST-WAR PERIOD
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