Trajectory of Prediction of Immediate Surroundings for Autonomous Vehicles Using Hierarchical Deep Learning Model

Pei-Yun Hsu, Mei Lin Huang, H. Chiang
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引用次数: 1

Abstract

A predicting model based on long-short-term-memory (LSTM) and gated recurrent unit (GRU) is proposed to assist autonomous vehicles (AVs) to drive safely. To understand the behaviors of surroundings under a mixed scene of vehicles, bicycles, and pedestrians, the proposed model can predict the future trajectory of each object with models constructed by GRU. Since different objects have diverse behaviors, this paper applies different models to different categories for vehicles, pedestrians, and cyclists. For each object, the proposed model considers three observed trajectories with different time steps as the input data to predict a more accurate future trajectory. The proposed model is verified and compared with LSTM and GRU on KITTI dataset in the conducted experiments.
基于层次深度学习模型的自动驾驶汽车即时环境预测轨迹
为了辅助自动驾驶汽车安全行驶,提出了一种基于长短期记忆(LSTM)和门控循环单元(GRU)的预测模型。为了理解车辆、自行车和行人混合场景下周围环境的行为,该模型可以使用GRU构建的模型预测每个物体的未来轨迹。由于不同的对象具有不同的行为,本文对车辆、行人和骑自行车者的不同类别应用不同的模型。对于每个目标,该模型考虑三个不同时间步长的观测轨迹作为输入数据,以预测更准确的未来轨迹。在KITTI数据集上对该模型进行了验证,并与LSTM和GRU进行了对比。
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