CVJul 22, 2018

Pedestrian Trajectory Prediction with Structured Memory Hierarchies

arXiv:1807.08381v119 citations
Originality Incremental advance
AI Analysis

This work addresses pedestrian motion prediction for safety and navigation applications, representing an incremental improvement with a novel memory-based method.

The paper tackles pedestrian trajectory prediction by proposing a framework with structured memory hierarchies, achieving improved anticipation of future motion compared to state-of-the-art methods on a novel multimodal dataset and a public benchmark.

This paper presents a novel framework for human trajectory prediction based on multimodal data (video and radar). Motivated by recent neuroscience discoveries, we propose incorporating a structured memory component in the human trajectory prediction pipeline to capture historical information to improve performance. We introduce structured LSTM cells for modelling the memory content hierarchically, preserving the spatiotemporal structure of the information and enabling us to capture both short-term and long-term context. We demonstrate how this architecture can be extended to integrate salient information from multiple modalities to automatically store and retrieve important information for decision making without any supervision. We evaluate the effectiveness of the proposed models on a novel multimodal dataset that we introduce, consisting of 40,000 pedestrian trajectories, acquired jointly from a radar system and a CCTV camera system installed in a public place. The performance is also evaluated on the publicly available New York Grand Central pedestrian database. In both settings, the proposed models demonstrate their capability to better anticipate future pedestrian motion compared to existing state of the art.

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