Pedestrian crossing decision prediction based on behavioral feature using deep learning

H. A. Sidharta, Eko Mulyanto Yuniamo, B. Kindhi, Mauridhi Hery Pumomo
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引用次数: 1

Abstract

A pedestrian is classified as a Vulnerable Road User (VRU) due during walking or crossing in the road pedestrian is not protected or shielded. This caused pedestrians to have the most potential risk than other road users, such as motorcycle drivers or car drivers. To support Autonomous vehicles (AV) toward a higher level of independence, AV needs to recognize pedestrian and behavior related to it. Our proposed method utilizes a deep learning approach to predict pedestrian behavior using eight pedestrian input features with three frame values: five frames, ten frames, and 15 frames. Each number of frames is consists of four models, with one hidden layer, two hidden layers, three hidden layers, and four hidden layers. To improve the deep learning model, we conduct hyperparameter tuning, including hidden layer parameters and a number of frame numbers. Our model can predict pedestrians to cross or not cross using eight input features, with the best model using a number of frames values ten combined with three hidden layers. The resulting model prediction accuracy is 94.77%, and the model prediction loss is 0.18%.
基于深度学习行为特征的人行横道决策预测
行人在行走或过马路时没有受到保护或屏蔽,因此被归类为易受伤害的道路使用者(VRU)。这使得行人比其他道路使用者(如摩托车司机或汽车司机)面临的潜在风险最大。为了使自动驾驶汽车(AV)具有更高的独立性,自动驾驶汽车需要识别行人和与其相关的行为。我们提出的方法利用深度学习方法来预测行人行为,使用8个行人输入特征,分别具有3个帧值:5帧、10帧和15帧。每帧数由4个模型组成,1个隐藏层、2个隐藏层、3个隐藏层、4个隐藏层。为了改进深度学习模型,我们进行了超参数调优,包括隐藏层参数和一些帧数。我们的模型可以使用8个输入特征来预测行人穿过或不穿过,最好的模型使用许多帧值与三个隐藏层相结合。所得模型预测精度为94.77%,模型预测损失为0.18%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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