Saree Classification And Color Change

Authors

  • Avs Radhika Assistant Professor, Department Of CSE, Bhoj Reddy Engineering College for Women, India. Author
  • B Keerthi, N Keerthi B.tech students, Department Of CSE, Bhoj Reddy Engineering College for Women, India. Author

Abstract

Sarees are integral to Indian culture and serve as daily attire for most women on the subcontinent. Despite their popularity, there exists a gap in research regarding the automatic segmentation of sarees and the independent color modification of distinct components. Existing methods rely on labor- intensive manual adjustments through commercial applications, impeding productivity and resulting in avoidable expenses. This paper presents a tool that smartly coordinates different deep-learning techniques to modify the color patterns found on different parts of a saree. MODNet is applied for background removal and custom-trained Mask R-CNN models are utilized to precisely segment the saree body and border. The subsequent application of a color-changing algorithm in the HSV color space facilitates independent color modification for the saree border and body. The methodology proposed in this paper can be extended to any kind of clothing such as shirts, trousers, kurtas, kimonos, etc. An accuracy of 93.01% was achieved for the saree border segmentation, and an accuracy of 89.23% was achieved for the saree body segmentation when tested on a set of 50 test images.

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Published

2025-06-25

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Section

Articles

How to Cite

Saree Classification And Color Change. (2025). International Journal of Engineering and Science Research, 15(3s), 64-69. https://www.ijesr.org/index.php/ijesr/article/view/112

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