Journal of Automotive Safety and Energy ›› 2024, Vol. 15 ›› Issue (5): 689-701.DOI: 10.3969/j.issn.1674-8484.2024.05.007
• Intelligent Driving and Intelligent Transportation • Previous Articles Next Articles
QU Guangyue(
), YANG Lan(
), YUAN Meng, FANG Shan, LIU Songyan
Received:2024-08-19
Revised:2024-09-27
Online:2024-10-31
Published:2024-11-07
CLC Number:
QU Guangyue, YANG Lan, YUAN Meng, FANG Shan, LIU Songyan. A multimodal trajectory prediction method of pedestrians at signalized intersections for autonomous vehicles[J]. Journal of Automotive Safety and Energy, 2024, 15(5): 689-701.
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URL: https://www.journalase.com/EN/10.3969/j.issn.1674-8484.2024.05.007
| 1:输入: SFM模型,SGAN模型,训练数据集,误差阈值 |
|---|
| 2:输出: 集成模型的最终预测结果 |
| 3:初始化: 样本数N,样本权重wi(1) = 1/ N,弱学习器数量T,权重系数αt |
| 4:FOR t = 1,…,T |
| 5:获取SFM和SGAN的预测结果ptpre,i |
| 6:计算样本错误率 |
| 7:计算弱学习器权重系数αt = {ln[(1 - εt) / εt]} / 2 |
| 8:更新样本权重wi(t+1) = wi(t) exp(αt || ptreal,i - ptpre,i ||) |
| 9:对样本权重进行归一化,使得 ∑wi = 1 |
| 10:累加弱学习器组成强学习器H(x) = H(x) + αtht(x) |
| 11:ENDFOR |
| 1:输入: SFM模型,SGAN模型,训练数据集,误差阈值 |
|---|
| 2:输出: 集成模型的最终预测结果 |
| 3:初始化: 样本数N,样本权重wi(1) = 1/ N,弱学习器数量T,权重系数αt |
| 4:FOR t = 1,…,T |
| 5:获取SFM和SGAN的预测结果ptpre,i |
| 6:计算样本错误率 |
| 7:计算弱学习器权重系数αt = {ln[(1 - εt) / εt]} / 2 |
| 8:更新样本权重wi(t+1) = wi(t) exp(αt || ptreal,i - ptpre,i ||) |
| 9:对样本权重进行归一化,使得 ∑wi = 1 |
| 10:累加弱学习器组成强学习器H(x) = H(x) + αtht(x) |
| 11:ENDFOR |
| 参数 | 标定值 |
|---|---|
| 行人作用强度系数,Ap | 0.83 |
| 行人距离影响系数,Bp | 1.89 |
| 斑马线外约束力强度,Ab | 0.45 |
| 斑马线距离影响系数,Bb | 0.94 |
| 斑马线内约束力强度,Abr | 0.22 |
| 斑马线距离影响系数,Bbr | 0.77 |
| 信号灯作用强度系数,As | 0.15 |
| 信号灯距离影响系数,Bs | 0.21 |
| 参数 | 标定值 |
|---|---|
| 行人作用强度系数,Ap | 0.83 |
| 行人距离影响系数,Bp | 1.89 |
| 斑马线外约束力强度,Ab | 0.45 |
| 斑马线距离影响系数,Bb | 0.94 |
| 斑马线内约束力强度,Abr | 0.22 |
| 斑马线距离影响系数,Bbr | 0.77 |
| 信号灯作用强度系数,As | 0.15 |
| 信号灯距离影响系数,Bs | 0.21 |
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