AI-ASSISTED SCULPTURE DESIGN: A FUSION OF TRADITION AND INNOVATION
DOI:
https://doi.org/10.29121/shodhkosh.v6.i5s.2025.6896Keywords:
AI-Assisted Sculpture Design, Generative Models, Human–Machine Co-Creativity, Cultural Motif Embedding, 3D Mesh OptimizationAbstract [English]
AI-assisted sculpture design is a radical melding of the conventional art craftsmanship and the innovative computational intelligence. The proposed study examines a hybrid form of creative ecosystem where sculptors work together with generative models, including GANs, diffusion systems, and mesh-generating neural networks to create sculptural, conceptually rich, structurally optimized, and culturally-infused sculptural entities. The suggested model will be based on the multimodal inputs which are hand-drawn sketches, 3D scans, material textures, and regional motifs which can allow the AI to be not only viewed as an automated tool but also as a collaborative contributor. Based upon the theories of human-machine collaboration and aesthetic cognition, the work presents how the concept of hybrid authorship redefines artistic intention, increases the speed of ideation, and facilitates experimentation with volumetric geometries that cannot be achieved in a field of manual work. The form of methodology is placed on the strict processing and annotation of sculptural data, native to curvature data, and surface anomalies, stylistic representation, and cultural emblem correlation. Moreover, a simulation layer of material consciousness is applied that assesses the reactions of stone, metals, clay, and composite, forecasts stressful regions, texture results, and manufacturability. The experiments show that there is a higher efficiency in design iteration, accuracy in integrating cultural motifs and physical plausibility of generated forms.
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Copyright (c) 2025 Subhash Kumar Verma, Sorabh Sharma, Avishi Mohta, Mr. Rohit Chandwaskar, Dr. Pompi Das Sengupta, Suma Sidramappa Hosamani

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