arXiv Open Access 2026

Adaptive Virtual Reality Museum: A Closed-Loop Framewor for Engagement-Aware Cultural Heritage

Joseph Damouni Wadia Tanus Naomi Unkelos-Shpigel
Lihat Sumber

Abstrak

Static information presentation in VR cultural heritage often causes cognitive overload or under-stimulation. We introduce a closed-loop adaptive interface that tailors content depth to real-time visitor behavior through implicit multimodal sensing. Our approach continuously monitors gaze dwell, head kinematics, and locomotion to infer engagement via a transparent rule-based classifier, which drives a Large Language Model to dynamically modulate explanation complexity without interrupting exploration. We implemented a proof-of-concept in the Berat Ethnographic Museum and conducted a preliminary evaluation (N=16) comparing adaptive versus static content. Results indicate that adaptive participants demonstrated 2-3x increases in reading engagement and exploration time while maintaining high usability (SUS = 84.3). Technical validation confirmed sub-millisecond engagement inference latency on consumer VR hardware. These preliminary findings warrant larger-scale investigation and raise questions about engagement validation, AI transparency, and generative models in heritage contexts. We present this work-in-progress to spark discussion about implicit AI-driven adaptation in immersive cultural experiences.

Topik & Kata Kunci

Penulis (3)

J

Joseph Damouni

W

Wadia Tanus

N

Naomi Unkelos-Shpigel

Format Sitasi

Damouni, J., Tanus, W., Unkelos-Shpigel, N. (2026). Adaptive Virtual Reality Museum: A Closed-Loop Framewor for Engagement-Aware Cultural Heritage. https://arxiv.org/abs/2603.13639

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Tahun Terbit
2026
Bahasa
en
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arXiv
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Open Access ✓