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Papers/MultiPath++: Efficient Information Fusion and Trajectory A...

MultiPath++: Efficient Information Fusion and Trajectory Aggregation for Behavior Prediction

Balakrishnan Varadarajan, Ahmed Hefny, Avikalp Srivastava, Khaled S. Refaat, Nigamaa Nayakanti, Andre Cornman, Kan Chen, Bertrand Douillard, Chi Pang Lam, Dragomir Anguelov, Benjamin Sapp

2021-11-29motion predictionFuture predictionMotion ForecastingAutonomous Driving
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Abstract

Predicting the future behavior of road users is one of the most challenging and important problems in autonomous driving. Applying deep learning to this problem requires fusing heterogeneous world state in the form of rich perception signals and map information, and inferring highly multi-modal distributions over possible futures. In this paper, we present MultiPath++, a future prediction model that achieves state-of-the-art performance on popular benchmarks. MultiPath++ improves the MultiPath architecture by revisiting many design choices. The first key design difference is a departure from dense image-based encoding of the input world state in favor of a sparse encoding of heterogeneous scene elements: MultiPath++ consumes compact and efficient polylines to describe road features, and raw agent state information directly (e.g., position, velocity, acceleration). We propose a context-aware fusion of these elements and develop a reusable multi-context gating fusion component. Second, we reconsider the choice of pre-defined, static anchors, and develop a way to learn latent anchor embeddings end-to-end in the model. Lastly, we explore ensembling and output aggregation techniques -- common in other ML domains -- and find effective variants for our probabilistic multimodal output representation. We perform an extensive ablation on these design choices, and show that our proposed model achieves state-of-the-art performance on the Argoverse Motion Forecasting Competition and the Waymo Open Dataset Motion Prediction Challenge.

Results

TaskDatasetMetricValueModel
Autonomous VehiclesArgoverse CVPR 2020DAC (K=6)0.9876multipath++
Autonomous VehiclesArgoverse CVPR 2020MR (K=1)0.5645multipath++
Autonomous VehiclesArgoverse CVPR 2020MR (K=6)0.1324multipath++
Autonomous VehiclesArgoverse CVPR 2020brier-minFDE (K=6)1.7932multipath++
Autonomous VehiclesArgoverse CVPR 2020minADE (K=1)1.6235multipath++
Autonomous VehiclesArgoverse CVPR 2020minADE (K=6)0.7897multipath++
Autonomous VehiclesArgoverse CVPR 2020minFDE (K=1)3.6141multipath++
Autonomous VehiclesArgoverse CVPR 2020minFDE (K=6)1.2144multipath++
Motion ForecastingArgoverse CVPR 2020DAC (K=6)0.9876multipath++
Motion ForecastingArgoverse CVPR 2020MR (K=1)0.5645multipath++
Motion ForecastingArgoverse CVPR 2020MR (K=6)0.1324multipath++
Motion ForecastingArgoverse CVPR 2020brier-minFDE (K=6)1.7932multipath++
Motion ForecastingArgoverse CVPR 2020minADE (K=1)1.6235multipath++
Motion ForecastingArgoverse CVPR 2020minADE (K=6)0.7897multipath++
Motion ForecastingArgoverse CVPR 2020minFDE (K=1)3.6141multipath++
Motion ForecastingArgoverse CVPR 2020minFDE (K=6)1.2144multipath++
Autonomous DrivingArgoverse CVPR 2020DAC (K=6)0.9876multipath++
Autonomous DrivingArgoverse CVPR 2020MR (K=1)0.5645multipath++
Autonomous DrivingArgoverse CVPR 2020MR (K=6)0.1324multipath++
Autonomous DrivingArgoverse CVPR 2020brier-minFDE (K=6)1.7932multipath++
Autonomous DrivingArgoverse CVPR 2020minADE (K=1)1.6235multipath++
Autonomous DrivingArgoverse CVPR 2020minADE (K=6)0.7897multipath++
Autonomous DrivingArgoverse CVPR 2020minFDE (K=1)3.6141multipath++
Autonomous DrivingArgoverse CVPR 2020minFDE (K=6)1.2144multipath++

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