Abstract

Abstract. With increasing performance and availability of thermal cameras the number of applications using them in various purposes grows noticeable. Nowadays thermal vision is widely used in industrial control and monitoring, thermal mapping of industrial areas, surveillance and robotics which output huge amount of thermal images. This circumstance creates the necessary basis for applying deep learning which demonstrates the state-of-the-art performance for the most complicated computer vision tasks. Using different modalities for scene analysis allows to outperform results of mono-modal processing, but in case of machine learning it requires synchronized annotated multimodal dataset. The prerequisite condition for such dataset creating is geometric calibration of sensors used for image acquisition. So the purpose of the performed study was to develop a technique for joint calibration of color and long wave infra-red cameras which are to be used for collecting multimodal dataset needed for the tasks of computer vision algorithms developing and evaluating.The paper presents the techniques for camera parameters estimation and experimental evaluation of interior orientation of color and long wave infra-red cameras for further exploiting in datasets collecting. Also the results of geometrically calibrated camera exploiting for 3D reconstruction and 3D model realistic texturing based on visible and thermal imagery are presented. They proved the effectivity of the developed techniques for collecting and augmenting synchronized multimodal imagery dataset for convolutional neural networks model training and evaluating.

Highlights

  • Recent impressive progress in technical characteristics of sensors of different types allows using these sensors for solving sophisticated tasks in wide variety of applications: surveillance and industrial infra-structures monitoring, driver assistance and robotics, 3D scene analysis and understanding

  • To provide synchronization of collected color and thermal images the technique based on scene 3D reconstruction (Knyaz, 2019) was applied

  • Both color and thermal image sequences were used for scene 3D reconstruction by structure from motion technique

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Summary

INTRODUCTION

Recent impressive progress in technical characteristics of sensors of different types (vision, near infra-red, short, middle and long wave infra-red, ultra-violet etc.) allows using these sensors for solving sophisticated tasks in wide variety of applications: surveillance and industrial infra-structures monitoring, driver assistance and robotics, 3D scene analysis and understanding. Techniques for geometric calibration of thermographic cameras has been proposed for different kinds of application such as energy pollution analysis in the urban area (Conte et al, 2018), architecture, civil engineering and industry inspection (Laguela et al, 2011), non-destructive testing (Yang et al, 2018), assessing the energy efficiency of real estates (Borrmann et al, 2012), building survey (Iwaszczuk and Stilla, 2017), material testing (Luhmann et al, 2013) and others They allow to estimate camera interior orientation parameters for further retrieving 3D scene geometry from thermal images.

RELATED WORK
JOINT CAMERAS CALIBRATION
FLIR ONE PRO camera calibration
UAV cameras calibration
Scene 3D model reconstruction
Camera orientation
CONCLUSION
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