MS-Net: A Multi-Path Sparse Model for Motion Prediction in Multi-Scenes
This work addresses motion prediction for autonomous driving by improving accuracy across multiple scenes, though it is incremental as it builds on existing deep learning methods.
The paper tackles the problem of motion prediction in autonomous driving by proposing MS-Net, a multi-path sparse model that selectively activates parameters for different driving scenes, achieving state-of-the-art performance on datasets like ETH and UCY and ranking 2nd on the INTERACTION challenge.
The multi-modality and stochastic characteristics of human behavior make motion prediction a highly challenging task, which is critical for autonomous driving. While deep learning approaches have demonstrated their great potential in this area, it still remains unsolved to establish a connection between multiple driving scenes (e.g., merging, roundabout, intersection) and the design of deep learning models. Current learning-based methods typically use one unified model to predict trajectories in different scenarios, which may result in sub-optimal results for one individual scene. To address this issue, we propose Multi-Scenes Network (aka. MS-Net), which is a multi-path sparse model trained by an evolutionary process. MS-Net selectively activates a subset of its parameters during the inference stage to produce prediction results for each scene. In the training stage, the motion prediction task under differentiated scenes is abstracted as a multi-task learning problem, an evolutionary algorithm is designed to encourage the network search of the optimal parameters for each scene while sharing common knowledge between different scenes. Our experiment results show that with substantially reduced parameters, MS-Net outperforms existing state-of-the-art methods on well-established pedestrian motion prediction datasets, e.g., ETH and UCY, and ranks the 2nd place on the INTERACTION challenge.