Abstract

An infrared sensor is a commonly used imaging device. Unmanned aerial vehicles, the most promising moving platform, each play a vital role in their own field, respectively. However, the two devices are seldom combined in automatic ground vehicle detection tasks. Therefore, how to make full use of them—especially in ground vehicle detection based on aerial imagery–has aroused wide academic concern. However, due to the aerial imagery’s low-resolution and the vehicle detection’s complexity, how to extract remarkable features and handle pose variations, view changes as well as surrounding radiation remains a challenge. In fact, these typical abstract features extracted by convolutional neural networks are more recognizable than the engineering features, and those complex conditions involved can be learned and memorized before. In this paper, a novel approach towards ground vehicle detection in aerial infrared images based on a convolutional neural network is proposed. The UAV and the infrared sensor used in this application are firstly introduced. Then, a novel aerial moving platform is built and an aerial infrared vehicle dataset is unprecedentedly constructed. We publicly release this dataset (NPU_CS_UAV_IR_DATA), which can be used for the following research in this field. Next, an end-to-end convolutional neural network is built. With large amounts of recognized features being iteratively learned, a real-time ground vehicle model is constructed. It has the unique ability to detect both the stationary vehicles and moving vehicles in real urban environments. We evaluate the proposed algorithm on some low–resolution aerial infrared images. Experiments on the NPU_CS_UAV_IR_DATA dataset demonstrate that the proposed method is effective and efficient to recognize the ground vehicles. Moreover it can accomplish the task in real-time while achieving superior performances in leak and false alarm ratio.

Highlights

  • Vehicle detection is an essential and pivotal role in several applications like intelligent video surveillance [1,2,3,4], car crash analysis [5], autonomous vehicle driving [6]

  • The Gabor filters are for feature extraction and these extracted features are used to train a classifier for detection

  • We propose a method of detecting ground vehicles in aerial imagery based on convolutional neural network

Read more

Summary

Introduction

Vehicle detection is an essential and pivotal role in several applications like intelligent video surveillance [1,2,3,4], car crash analysis [5], autonomous vehicle driving [6]. Most traditional approaches adopt the way that the camera is installed on a low-altitude pole or mounted on the vehicle itself. Sun and Zehang [7] present a method which jointly uses Gabor filters and Support Vector. The Gabor filters are for feature extraction and these extracted features are used to train a classifier for detection. The authors in [8] propose a method to detect. Jie and Gao [9] propose a moving vehicle detection method based on example-learning. With regard to these approaches, the coverage of camera is limited despite rotating in multiple directions, they only detect vehicles on a small scale

Methods
Results
Discussion
Conclusion
Full Text
Paper version not known

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

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.