Abstract

Nowadays, deep learning methods based on a virtual environment are widely applied to research and technology development for autonomous vehicle’s smart sensors and devices. Learning various driving environments in advance is important to handle unexpected situations that can exist in the real world and to continue driving without accident. For training smart sensors and devices of an autonomous vehicle well, a virtual simulator should create scenarios of various possible real-world situations. To create reality-based scenarios, data on the real environment must be collected from a real driving vehicle or a scenario analysis process conducted by experts. However, these two approaches increase the period and the cost of scenario generation as more scenarios are created. This paper proposes a scenario generation method based on deep learning to create scenarios automatically for training autonomous vehicle smart sensors and devices. To generate various scenarios, the proposed method extracts multiple events from a video which is taken on a real road by using deep learning and generates the multiple event in a virtual simulator. First, Faster-region based convolution neural network (Faster-RCNN) extracts bounding boxes of each object in a driving video. Second, the high-level event bounding boxes are calculated. Third, long-term recurrent convolution networks (LRCN) classify each type of extracted event. Finally, all multiple event classification results are combined into one scenario. The generated scenarios can be used in an autonomous driving simulator to teach multiple events that occur during real-world driving. To verify the performance of the proposed scenario generation method, experiments using real driving video data and a virtual simulator were conducted. The results for deep learning model show an accuracy of 95.6%; furthermore, multiple high-level events were extracted, and various scenarios were generated in a virtual simulator for smart sensors and devices of an autonomous vehicle.

Highlights

  • Autonomous vehicles have been a big trend in the development of advanced countries worldwide [1,2,3]

  • 95.6%; multiple high-level events were extracted, and various scenarios were generated in a virtual simulator for smart sensors and devices of an autonomous vehicle

  • This paper proposes an approach to generate the training scenario for autonomous vehicle smart sensors and devices including multiple events while considering multiple objects based on the automatic analysis of a driving video by using two types of deep learning approaches

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Summary

Introduction

Autonomous vehicles have been a big trend in the development of advanced countries worldwide [1,2,3]. As an example, when two individuals are talking and walking, and extraction is to be performed based on a single object, only two walking individuals can be extracted Such an approach cannot analyze advanced events, including multiple objects and interaction. This paper proposes an approach to generate the training scenario for autonomous vehicle smart sensors and devices including multiple events while considering multiple objects based on the automatic analysis of a driving video by using two types of deep learning approaches.

Driving Scenario Generation Approach
Deep Learning-Based Driving Video Analysis Approach
Multi-Event-Based Scenario Generation Approach
High-Level Event Area Extraction Step
Scenario Generation Step
Experiments and Analysis
Experiment Environment and Training Data
High-Level Event Area Extraction Results
LRCN-Based Event Classification Result
Scenario Generation and Implementation Results
Findings
Conclusions
Full Text
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