Abstract

Self-driving cars, i.e., fully automated cars, will spread in the upcoming two decades, according to the representatives of automotive industries; owing to technological breakthroughs in the fourth industrial revolution, as the introduction of deep learning has completely changed the concept of automation. There is considerable research being conducted regarding object detection systems, for instance, lane, pedestrian, or signal detection. This paper specifically focuses on pedestrian detection while the car is moving on the road, where speed and environmental conditions affect visibility. To explore the environmental conditions, a pedestrian custom dataset based on Common Object in Context (COCO) is used. The images are manipulated with the inverse gamma correction method, in which pixel values are changed to make a sequence of bright and dark images. The gamma correction method is directly related to luminance intensity. This paper presents a flexible, simple detection system called Mask R-CNN, which works on top of the Faster R-CNN (Region Based Convolutional Neural Network) model. Mask R-CNN uses one extra feature instance segmentation in addition to two available features in the Faster R-CNN, called object recognition. The performance of the Mask R-CNN models is checked by using different Convolutional Neural Network (CNN) models as a backbone. This approach might help future work, especially when dealing with different lighting conditions.

Highlights

  • The dataset was intoconverted a tensor since this structure during structure during the pre-processing

  • We found a robust and flexible detection model (Mask R-Convolutional Neural Network (CNN)) that can perform well in any scenario, whether it is day or night

  • It is found that ResNet50 based Mask R-CNN is better for real-time detection systems, because self-driving cars run on the road with real data that changes in milliseconds

Read more

Summary

Introduction

Previous studies presented that energy minimization is a critical area of autonomous transport system development, where advanced longitudinal and lateral vehicle control methods will play a key role in achieving expected results [1,2,3,4,5,6,7]. Numerous research papers propose to improve the efficiency of the vehicle control process through the development of sensor systems and image detection methods [8,9,10,11]. We understand that image detection approaches can directly affect the efficiency of highly automated transport systems. Our paper discusses the comparison of different models influencing the efficiency of image detection processes

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call