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dc.contributor.advisorBiswas, Pradipta
dc.contributor.authorMitra, Mukund
dc.date.accessioned2026-01-20T04:30:01Z
dc.date.available2026-01-20T04:30:01Z
dc.date.submitted2026
dc.identifier.urihttps://etd.iisc.ac.in/handle/2005/8276
dc.description.abstractThe study of time-series prediction and intent modeling forms a fundamental component of intelligent and adaptive systems in robotics and human–machine interaction. Accurately modeling temporal dependencies and anticipating user intent are essential for achieving seamless collaboration, safety, and autonomy in systems such as collaborative robots, eXtended Reality (XR) interfaces, and virtual pilot assistance platforms. Despite substantial advances in modeling and control, existing approaches often struggle to represent the stochastic, nonlinear, and context-sensitive characteristics of human behavior in dynamic environments. This thesis addresses these challenges by developing and investigating probabilistic and learning-based frameworks for time-series prediction across diverse interaction scenarios. The research begins with probabilistic formulations for intent prediction during human– robot handover. A framework based on Maximum Entropy Deep Inverse Reinforcement Learning (MEDIRL) was developed to infer human intent from partial hand trajectories by modeling motion as a reward-driven process. This approach was extended to a multimodal setting that integrates hand motion and eye-gaze, thereby enhancing robustness and improving early intent recognition. The inclusion of gaze information enabled the model to capture attention-driven behavior and reduce ambiguity in predicting users’ intended targets during human-robot handover. Building on these foundations, the thesis advances to multi-agent time-series prediction for robot-assisted manufacturing. A Feature-Based Bayesian Interaction Primitive (FBIP) formulation was proposed to extend classical Bayesian Interaction Primitives by embedding task-relevant feature functions within the probabilistic model. This framework enabled the prediction of coordinated motion patterns between human and robot. The probabilistic representation captured inter-agent dependencies effectively. To address long-horizon temporal forecasting, the thesis introduces BiPTraP (Bayesian Interaction Primitives with Transformer for Predicting Time-Series Data)—a hybrid model that combines Bayesian state estimation with Transformer-based self-attention. Trajectories were represented in a basis space, updated probabilistically using ensemble Kalman filtering, and encoded as patches for Transformer-based temporal reasoning. BiPTraP demonstrated superior accuracy and stability in predicting non-stationary time-series data, outperforming conventional recurrent and probabilistic baselines. The final part of the thesis explores applications of time-series prediction in two contrasting domains. In XR interaction, a Sampling-based Maximum Entropy IRL (SMEIRL) framework was introduced for rapid target prediction during virtual and mixed-reality pointing tasks, achieving high prediction accuracy with efficient sampling. In aviation, state-ofthe- art sequence models—LSTM, Mamba, Jamba, and PatchTST—were benchmarked for pilot control input prediction using flight simulator data. The PatchTST achieved the lowest prediction error, highlighting its potential for developing intelligent virtual pilot assistance systems. Overall, the thesis presents a progression from probabilistic intent inference to scalable Transformer-based architectures for time-series prediction. The proposed methods demonstrate early intent recognition, multimodal fusion, and long-horizon forecasting capabilities across human–robot, XR, and flight control applications, contributing to the broader goal of enabling predictive, adaptive, and intent-aware autonomous systems.en_US
dc.description.sponsorshipPrime Minister Research Fellowshipen_US
dc.language.isoen_USen_US
dc.relation.ispartofseries;ET01244
dc.rightsI grant Indian Institute of Science the right to archive and to make available my thesis or dissertation in whole or in part in all forms of media, now hereafter known. I retain all proprietary rights, such as patent rights. I also retain the right to use in future works (such as articles or books) all or part of this thesis or dissertationen_US
dc.subjectMachine learningen_US
dc.subjectTime series predictionen_US
dc.subjectImitation learningen_US
dc.subjectroboticsen_US
dc.subjecthuman–machine interactionen_US
dc.subjecteXtended Realityen_US
dc.subjectMaximum Entropy Deep Inverse Reinforcement Learningen_US
dc.subjecteye-gazeen_US
dc.subjectgazeen_US
dc.subjectSampling-based Maximum Entropy IRLen_US
dc.subjectBayesian state estimationen_US
dc.subject.classificationResearch Subject Categories::TECHNOLOGY::Information technology::Automatic controlen_US
dc.titleTime-Series Prediction for Intent Aware Robot Learningen_US
dc.typeThesisen_US
dc.degree.namePhDen_US
dc.degree.levelDoctoralen_US
dc.degree.grantorIndian Institute of Scienceen_US
dc.degree.disciplineEngineeringen_US


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