設計工学・システム部門講演会講演論文集
Online ISSN : 2424-3078
セッションID: 3205
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Bayesian Deep Learningによる運転行動予測分布を用いた行動予測の正誤判定法の検討
*本間 流星綿貫 啓一楓 和憲
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In this study, we investigated a judgment method that classifies the prediction of driving behavior as correct or incorrect using a histogram of the prediction probability of driving behavior. XGBoost was used to judge the correctness of the prediction of driving behavior. The relative frequency of the histogram and the prediction class of driving behavior were used as the input features to XGBoost. The evaluation results of the judgment method for predicting driving behavior showed that the true negative rate was 63 %. This suggests that the proposed method is effective when incorrect predictions need to be excluded as much as possible.

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