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Title Sparse Prototype Network For Explainable Pedestrian Behavior Prediction
ID_Doc 52379
Authors Feng Y.; Carballo A.; Takeda K.
Year 2025
Published IEEE Robotics and Automation Letters, 10, 5
DOI http://dx.doi.org/10.1109/LRA.2025.3550728
Abstract Predicting pedestrian behavior is challenging yet crucial for applications such as autonomous driving and smart cities. Recent deep learning models have achieved remarkable performance in making accurate predictions, but they fail to provide explanations of their inner workings. One reason for this problem is the multi-modal inputs. To bridge this gap, we present Sparse Prototype Network (SPN), an explainable method designed to simultaneously predict a pedestrian's future action, trajectory, and pose. SPN leverages an intermediate prototype bottleneck layer to provide sample-based explanations for its predictions. The prototypes are modality-independent, meaning that they can correspond to any modality from the input. Therefore, SPN can extend to arbitrary combinations of modalities. Regularized by mono-semanticity and clustering constraints, the prototypes learn consistent and human-understandable features and achieve state-of-the-art performance on action, trajectory and pose prediction on TITAN and PIE. Finally, we propose a metric named Top-K Mono-semanticity Scale to quantitatively evaluate the explainability. Qualitative results show a positive correlation between sparsity and explainability. © 2016 IEEE.
Author Keywords Automation technologies for smart cities; deep learning for visual perception; intention recognition


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