Automated Web Design And Code Generation Using Deep Learning

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Vishaal Saravanan et.al

Abstract

Excited by ground-breaking progress in automatic code generation, machine translation, and computer vision, further simplify web design workflow by making it easier and productive. A Model architecture is proposed for the generation of static web templates from hand-drawn images. The model pipeline uses the word-embedding technique succeeded by long short-term memory (LSTM) for code snippet prediction. Also, canny edge detection algorithm fitted with VGG19 convolutional neural net (CNN) and attention-based LSTM for web template generation. Extracted features are concatenated, and a terminal LSTM with a SoftMax function is called for final prediction. The proposed model is validated with a benchmark based on the BLUE score, and performance improvement is compared with the existing image generation algorithms.

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How to Cite
et.al, V. S. (2021). Automated Web Design And Code Generation Using Deep Learning. Turkish Journal of Computer and Mathematics Education (TURCOMAT), 12(6), 364–373. Retrieved from https://turcomat.org/index.php/turkbilmat/article/view/1401
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