Search Results for author: Pin Wang

Found 28 papers, 0 papers with code

Formulation of Deep Reinforcement Learning Architecture Toward Autonomous Driving for On-Ramp Merge

no code implementations7 Sep 2017 Pin Wang, Ching-Yao Chan

To tackle such a complicated control problem, we propose to apply Deep Reinforcement Learning (DRL) techniques for finding an optimal driving policy by maximizing the long-term reward in an interactive environment.

Autonomous Driving reinforcement-learning +1

Autonomous Ramp Merge Maneuver Based on Reinforcement Learning with Continuous Action Space

no code implementations25 Mar 2018 Pin Wang, Ching-Yao Chan

Most importantly, in contrast to most reinforcement learning applications in which the action space is resolved as discrete, our approach treats the action space as well as the state space as continuous without incurring additional computational costs.

reinforcement-learning Reinforcement Learning (RL)

A Data Driven Method of Optimizing Feedforward Compensator for Autonomous Vehicle

no code implementations31 Jan 2019 Tianyu Shi, Pin Wang, Ching-Yao Chan, Chonghao Zou

A reliable controller is critical and essential for the execution of safe and smooth maneuvers of an autonomous vehicle. The controller must be robust to external disturbances, such as road surface, weather, and wind conditions, and so on. It also needs to deal with the internal parametric variations of vehicle sub-systems, including power-train efficiency, measurement errors, time delay, so on. Moreover, as in most production vehicles, the low-control commands for the engine, brake, and steering systems are delivered through separate electronic control units. These aforementioned factors introduce opaque and ineffectiveness issues in controller performance. In this paper, we design a feed-forward compensate process via a data-driven method to model and further optimize the controller performance. We apply the principal component analysis to the extraction of most influential features. Subsequently, we adopt a time delay neural network and include the accuracy of the predicted error in a future time horizon. Utilizing the predicted error, we then design a feed-forward compensate process to improve the control performance. Finally, we demonstrate the effectiveness of the proposed feed-forward compensate process in simulation scenarios.

Driving Decision and Control for Autonomous Lane Change based on Deep Reinforcement Learning

no code implementations23 Apr 2019 Tianyu Shi, Pin Wang, Xuxin Cheng, Ching-Yao Chan, Ding Huang

We apply Deep Q-network (DQN) with the consideration of safety during the task for deciding whether to conduct the maneuver.

Autonomous Driving Decision Making +3

Intention-aware Long Horizon Trajectory Prediction of Surrounding Vehicles using Dual LSTM Networks

no code implementations6 Jun 2019 Long Xin, Pin Wang, Ching-Yao Chan, Jianyu Chen, Shengbo Eben Li, Bo Cheng

As autonomous vehicles (AVs) need to interact with other road users, it is of importance to comprehensively understand the dynamic traffic environment, especially the future possible trajectories of surrounding vehicles.

Autonomous Vehicles feature selection +2

Decision Making for Autonomous Driving via Augmented Adversarial Inverse Reinforcement Learning

no code implementations19 Nov 2019 Pin Wang, Dapeng Liu, Jiayu Chen, Hanhan Li, Ching-Yao Chan

Simulation results show that the augmented AIRL outperforms all the baseline methods, and its performance is comparable with that of the experts on all of the four metrics.

Autonomous Driving Imitation Learning +2

Quadratic Q-network for Learning Continuous Control for Autonomous Vehicles

no code implementations29 Nov 2019 Pin Wang, Hanhan Li, Ching-Yao Chan

Reinforcement Learning algorithms have recently been proposed to learn time-sequential control policies in the field of autonomous driving.

Autonomous Driving Continuous Control +3

A Novel Graph based Trajectory Predictor with Pseudo Oracle

no code implementations2 Feb 2020 Biao Yang, Guocheng Yan, Pin Wang, Ching-Yao Chan, Xiang Song, Yang Chen

Recent studies focus on modeling pedestrians' motion patterns with recurrent neural networks, capturing social interactions with pooling-based or graph-based methods, and handling future uncertainties by using random Gaussian noise as the latent variable.

Graph Attention Pedestrian Trajectory Prediction +2

Adversarially Robust Frame Sampling with Bounded Irregularities

no code implementations4 Feb 2020 Hanhan Li, Pin Wang

In recent years, video analysis tools for automatically extracting meaningful information from videos are widely studied and deployed.

TPPO: A Novel Trajectory Predictor with Pseudo Oracle

no code implementations4 Feb 2020 Biao Yang, Caizhen He, Pin Wang, Ching-Yao Chan, Xiaofeng Liu, Yang Chen

A latent variable predictor is proposed to estimate latent variable distributions from observed and ground-truth trajectories.

Autonomous Driving Human-Object Interaction Detection

Automated Lane Change Strategy using Proximal Policy Optimization-based Deep Reinforcement Learning

no code implementations7 Feb 2020 Fei Ye, Xuxin Cheng, Pin Wang, Ching-Yao Chan, Jiucai Zhang

The simulation results demonstrate the lane change maneuvers can be efficiently learned and executed in a safe, smooth, and efficient manner.

Autonomous Driving reinforcement-learning +1

Hybrid Embedded Deep Stacked Sparse Autoencoder with w_LPPD SVM Ensemble

no code implementations17 Feb 2020 Yongming Li, Yan Lei, Pin Wang, Yuchuan Liu

For the issue that class representation ability of abstract information is limited by small sample problem, a feature fusion strategy has been designed aiming to combining abstract information learned by HFESAE with original feature and obtain hybrid features for feature reduction.

feature selection

Deep Double-Side Learning Ensemble Model for Few-Shot Parkinson Speech Recognition

no code implementations20 Jun 2020 Yongming Li, Lang Zhou, Lingyun Qin, Yuwei Zeng, Yuchuan Liu, Yan Lei, Pin Wang, Fan Li

To solve these two problems, based on the existing Parkinson speech feature data set, a deep double-side learning ensemble model is designed in this paper that can reconstruct speech features and samples deeply and simultaneously.

Clustering Ensemble Learning +4

Meta Reinforcement Learning-Based Lane Change Strategy for Autonomous Vehicles

no code implementations28 Aug 2020 Fei Ye, Pin Wang, Ching-Yao Chan, Jiucai Zhang

The simulation results shows that the proposed method achieves an overall success rate up to 20% higher than the benchmark model when it is generalized to the new environment of heavy traffic density.

Autonomous Vehicles Imitation Learning +3

Integrated Age Estimation Mechanism

no code implementations11 Mar 2021 Fan Li, Yongming Li, Pin Wang, Jie Xiao, Fang Yan, Xinke Li

Traditional age estimation mechanism focuses estimation age error, but ignores that there is a deviation between the estimated age and real age due to disease.

Age Estimation

Meta-Adversarial Inverse Reinforcement Learning for Decision-making Tasks

no code implementations23 Mar 2021 Pin Wang, Hanhan Li, Ching-Yao Chan

Therefore, it is desirable for the trained model to adapt to new tasks that have limited data samples available.

Imitation Learning Meta-Learning +2

A Survey of Deep Reinforcement Learning Algorithms for Motion Planning and Control of Autonomous Vehicles

no code implementations29 May 2021 Fei Ye, Shen Zhang, Pin Wang, Ching-Yao Chan

In this survey, we systematically summarize the current literature on studies that apply reinforcement learning (RL) to the motion planning and control of autonomous vehicles.

Autonomous Driving Motion Planning +1

FA-GAN: Fused Attentive Generative Adversarial Networks for MRI Image Super-Resolution

no code implementations9 Aug 2021 Mingfeng Jiang, Minghao Zhi, Liying Wei, Xiaocheng Yang, Jucheng Zhang, Yongming Li, Pin Wang, Jiahao Huang, Guang Yang

High-resolution magnetic resonance images can provide fine-grained anatomical information, but acquiring such data requires a long scanning time.

Image Super-Resolution SSIM

Subject Enveloped Deep Sample Fuzzy Ensemble Learning Algorithm of Parkinson's Speech Data

no code implementations17 Nov 2021 Yiwen Wang, Fan Li, Xiaoheng Zhang, Pin Wang, Yongming Li

Therefore, it is necessary to reconstruct the existing large segments within one subject into few segments even one segment within one subject, which can facilitate the extraction of relevant speech features to characterize diagnostic markers for the whole subject.

Ensemble Learning speech-recognition +1

Envelope imbalanced ensemble model with deep sample learning and local-global structure consistency

no code implementations25 Jun 2022 Fan Li, Xiaoheng Zhang, Yongming Li, Pin Wang

Based on the analysis above, an imbalanced ensemble algorithm with the deep sample pre-envelope network (DSEN) and local-global structure consistency mechanism (LGSCM) is proposed here to solve the problem. This algorithm can guarantee high-quality deep envelope samples for considering the local manifold and global structures information, which is helpful for imbalance learning.

Ensemble Learning

A new Stack Autoencoder: Neighbouring Sample Envelope Embedded Stack Autoencoder Ensemble Model

no code implementations25 Oct 2022 Chuanyan Zhou, Jie Ma, Fan Li, Yongming Li, Pin Wang, Xiaoheng Zhang

Second, an embedded stack autoencoder (ESAE) is proposed and trained in each layer of sample space to consider the original samples during training and in the network structure, thereby better finding the relationship between original feature samples and deep feature samples.

Overlapping oriented imbalanced ensemble learning method based on projective clustering and stagewise hybrid sampling

no code implementations30 Nov 2022 Fan Li, Bo wang, Pin Wang, Yongming Li

Secondly, according to the characteristics of subset classes, a stage-wise hybrid sampling algorithm is designed to realize the de-overlapping and balancing of subsets.

Clustering Ensemble Learning +1

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