Abstract

One of the biggest challenges of training deep neural network is the need for massive data annotation. To train the neural network for object detection, millions of annotated training images are required. However, currently, there are no large-scale thermal image datasets that could be used to train the state of the art neural networks, while voluminous RGB image datasets are available. This paper presents a method that allows to create hundreds of thousands of annotated thermal images using the RGB pre-trained object detector. A dataset created in this way can be used to train object detectors with improved performance. The main gain of this work is the novel method for fully automatic thermal image labeling. The proposed system uses the RGB camera, thermal camera, 3D LiDAR, and the pre-trained neural network that detects objects in the RGB domain. Using this setup, it is possible to run the fully automated process that annotates the thermal images and creates the automatically annotated thermal training dataset. As the result, we created a dataset containing hundreds of thousands of annotated objects. This approach allows to train deep learning models with similar performance as the common human-annotation-based methods do. This paper also proposes several improvements to fine-tune the results with minimal human intervention. Finally, the evaluation of the proposed solution shows that the method gives significantly better results than training the neural network with standard small-scale hand-annotated thermal image datasets.

Highlights

  • This paper focuses on training neural networks to detect objects in thermal images, respectively, creating a thermal image dataset used for a neural network in a cheaper and more automated way than the common human-based annotation approach

  • This paper proposed and tested a new method for creation of large scale annotated thermal image datasets using a pre-trained deep convolutional neural network

  • We created a dataset of 300,000 annotated images for the thermal image object detection purposes

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Summary

Introduction

1.1. Our ResearchThese days, the Advanced driver-assistance systems (ADAS) systems and autonomous driving are the edge breaking segments of industry. Car producers invest extreme resources into the systems that would improve security or add more comfort to the driving experience. As the developers equip vehicles with better means to sense and understand their surroundings, neural networks are more often used. This paper focuses on training neural networks to detect objects in thermal images, respectively, creating a thermal image dataset used for a neural network in a cheaper and more automated way than the common human-based annotation approach. The thermal data are very important for modern

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