Show simple item record

dc.rights.licenseCC-BY-NC-ND
dc.contributor.advisorDell'Anna, Davide
dc.contributor.authorKarpiński, Rafal
dc.date.accessioned2025-10-15T23:01:50Z
dc.date.available2025-10-15T23:01:50Z
dc.date.issued2025
dc.identifier.urihttps://studenttheses.uu.nl/handle/20.500.12932/50537
dc.description.abstractThis thesis addresses the challenge of enabling robots to continuously assess the social appropriateness of their actions in dynamic, changing environments, a setting where conventional machine learning suffers from catastrophic forgetting. To address this, we propose the Explicit Disentanglement DualBranch (EDD) neural network framework, which uses panoptic segmentation to split images into two explicit channels: one isolating social agents (humans, robots, animals) and another isolating environmental context. These channels are processed by parallel MobileNetV2 branches, and their features are fused to predict appropriateness scores for nine potential robot actions in a given scenario. The model incorporates a Naive Rehearsal buffer to mitigate forgetting across sequential exposure to six diverse indoor domains. Evaluated on the OFFICEDB dataset of 2,000 simulated social scenarios, EDD offers significant improvements over FedLGR and Sonar-Pro baselines, achieving an RMSE of 0.777 (vs. 1.832 and 1.038, respectively) and moderate but positive correlation with ground truth annotations (Pearson’s CC 0.285, concordance CC 0.201). Interestingly, EDD’s final performance is statistically equivalent to an oracle trained on all domains simultaneously, demonstrating that continual learning constraints do not degrade predictive accuracy after incremental training. Near elimination of catastrophic forgetting is complemented by strong forward transfer (FWT 0.797), enabling near "zero-shot" generalisation to unseen environments. This work represents, to our knowledge, the first operationalisation of an image-disentanglement architecture within a domain-incremental continual learning framework for social robotics, demonstrating that simple rehearsal mechanisms and heuristic visual masking suffice to maintain robust action appropriateness assessments under non-stationary conditions.
dc.description.sponsorshipUtrecht University
dc.language.isoEN
dc.subjectThe subject of the thesis is the design of a model for assessing the social appropriateness of selected robot actions from static images of social scenarios. The work further addresses the challenge of data distribution shifts by applying the continual learning paradigm, enabling adaptation to images from different domains while mitigating catastrophic forgetting and performance degradation common in classical machine learning approaches.
dc.titleInforming Socially Appropriate Robot Behaviour under Data Distribution Shifts using Continual Learning
dc.type.contentMaster Thesis
dc.rights.accessrightsOpen Access
dc.subject.keywordsMachine Learning; Continual Learning; Social Robotics; Social Appropriateness; Catastrophic Forgetting; Domain-Incremental Learning; Domain-Invariant Representation; Experience Replay; Human-Robot Interaction; Environmental Context
dc.subject.courseuuArtificial Intelligence
dc.thesis.id54602


Files in this item

Thumbnail

This item appears in the following Collection(s)

Show simple item record