[2603.23933] ORACLE: Orchestrate NPC Daily Activities using Contrastive Learning with Transformer-CVAE
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Abstract page for arXiv paper 2603.23933: ORACLE: Orchestrate NPC Daily Activities using Contrastive Learning with Transformer-CVAE
Computer Science > Graphics arXiv:2603.23933 (cs) [Submitted on 25 Mar 2026] Title:ORACLE: Orchestrate NPC Daily Activities using Contrastive Learning with Transformer-CVAE Authors:Seong-Eun Hong, JuYeong Hwang, RyunHa Lee, HyeongYeop Kang View a PDF of the paper titled ORACLE: Orchestrate NPC Daily Activities using Contrastive Learning with Transformer-CVAE, by Seong-Eun Hong and 3 other authors View PDF HTML (experimental) Abstract:The integration of Non-player characters (NPCs) within digital environments has been increasingly recognized for its potential to augment user immersion and cognitive engagement. The sophisticated orchestration of their daily activities, reflecting the nuances of human daily routines, contributes significantly to the realism of digital environments. Nevertheless, conventional approaches often produce monotonous repetition, falling short of capturing the intricacies of real human activity plans. In response to this, we introduce ORACLE, a novel generative model for the synthesis of realistic indoor daily activity plans, ensuring NPCs' authentic presence in digital habitats. Exploiting the CASAS smart home dataset's 24-hour indoor activity sequences, ORACLE addresses challenges in the dataset, including its imbalanced sequential data, the scarcity of training samples, and the absence of pre-trained models encapsulating human daily activity patterns. ORACLE's training leverages the sequential data processing prowess of Transformers, the generativ...