Distributed Systems for Evaluating and Optimizing Environmental Art Design Using Image Processing
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Abstract
Improving the visual appeal and practicality of areas is a major function of environmental art design. Nevertheless, conventional techniques for assessing and improving such designs are frequently arbitrary and ineffective. In order to assess and improve environmental art design, this study suggests a distributed system that makes use of Generative Adversarial Networks (GANs) and sophisticated image processing methods based on the characteristics of Computer-aided design (CAD). The methodology is based on distributed demand-side management in intelligent energy systems and emphasizes the decentralization of computational resources for increased flexibility and effectiveness. In order to model different design situations and improve based on aesthetic characteristics like color balancing, spatial arrangement, and visual balance, the system uses GANs for creating images and design transmission. This method’s implementation in a distributed framework speeds up the assessment procedure and allows for continuous improvement and real-time feedback. A comparative examination of the findings from the experiment highlights the remarkable quality and effectiveness of the strategy presented in this study, which performs better than alternative strategies when it comes to of precision, recall, and F1 score. The results validate the superior performance of the suggested approach in relation to component extraction and recognition in CAD environmental artwork design. It is expected that this will support strong evidence for real-world applications and further research advancements in relevant sectors.
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