Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Remember Intentions: Retrospective-Memory-based Trajectory Prediction

About

To realize trajectory prediction, most previous methods adopt the parameter-based approach, which encodes all the seen past-future instance pairs into model parameters. However, in this way, the model parameters come from all seen instances, which means a huge amount of irrelevant seen instances might also involve in predicting the current situation, disturbing the performance. To provide a more explicit link between the current situation and the seen instances, we imitate the mechanism of retrospective memory in neuropsychology and propose MemoNet, an instance-based approach that predicts the movement intentions of agents by looking for similar scenarios in the training data. In MemoNet, we design a pair of memory banks to explicitly store representative instances in the training set, acting as prefrontal cortex in the neural system, and a trainable memory addresser to adaptively search a current situation with similar instances in the memory bank, acting like basal ganglia. During prediction, MemoNet recalls previous memory by using the memory addresser to index related instances in the memory bank. We further propose a two-step trajectory prediction system, where the first step is to leverage MemoNet to predict the destination and the second step is to fulfill the whole trajectory according to the predicted destinations. Experiments show that the proposed MemoNet improves the FDE by 20.3%/10.2%/28.3% from the previous best method on SDD/ETH-UCY/NBA datasets. Experiments also show that our MemoNet has the ability to trace back to specific instances during prediction, promoting more interpretability.

Chenxin Xu, Weibo Mao, Wenjun Zhang, Siheng Chen• 2022

Related benchmarks

TaskDatasetResultRank
Trajectory PredictionNBA (test)
minADE200.38
143
Trajectory PredictionETH UCY (test)--
65
Trajectory PredictionETH-UCY
Average ADE (20)0.24
57
Trajectory PredictionETH UCY Average--
56
Future Trajectory PredictionSDD (Stanford Drone Dataset) (test)
ADE8.56
51
Pedestrian trajectory predictionZARA2 UCY scene ETH (test)
ADE0.37
46
Pedestrian trajectory predictionHotel
ADE0.35
45
Pedestrian trajectory predictionETH
ADE1
45
Trajectory PredictionUniv--
36
Trajectory PredictionSDD
ADE8.56
35
Showing 10 of 26 rows

Other info

Code

Follow for update