2017
DOI: 10.1177/0954410017740917
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Thermal analysis of space debris for infrared-based active debris removal

Abstract: In space, visual based relative navigation systems suffer from dynamic illumination conditions of the target (Eclipse conditions, solar glare...etc.) where most of these issues are addressed by advanced mission planning techniques. However, such planning would not be always feasible or even if it is, it would not be straightforward for Active Debris Removal (ADR) missions. On the other hand, using an infrared based system would overcome this problem, if a guideline to predict infrared signature of space debris… Show more

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Cited by 12 publications
(10 citation statements)
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“…Finally, the infrared characteristics of the target spacecraft should be fully understood in order to maximize the performance of the NIR/TIR cameras. Although Yilmaz et al [30] proposed an infrared signature estimation method capable of characterizing the dynamical thermal behaviour of space debris, some effort is still required to assess its validity and to confirm whether an exact infrared appearance model of the target is needed for a robust relative navigation solution which relies on IR images.…”
Section: Review Of Monocular Eo Sensorsmentioning
confidence: 99%
“…Finally, the infrared characteristics of the target spacecraft should be fully understood in order to maximize the performance of the NIR/TIR cameras. Although Yilmaz et al [30] proposed an infrared signature estimation method capable of characterizing the dynamical thermal behaviour of space debris, some effort is still required to assess its validity and to confirm whether an exact infrared appearance model of the target is needed for a robust relative navigation solution which relies on IR images.…”
Section: Review Of Monocular Eo Sensorsmentioning
confidence: 99%
“…Typical distances for close‐proximity operations range from a few meters up to tens of meters and depend on the sensors employed, the type of operation and the target size (Fehse, ). The need for autonomous navigation extends to a wide range of tasks such as controlled orbiting, docking, and close range rendezvous that are required for space missions such as active debris removal (Bonnal, Ruault, & Desjean, ; Yılmaz, Aouf, Majewski, Sanchez‐Gestido, & Ortega, ), celestial body exploration, for example, comets and asteroids (Cheng, ) and on‐orbit servicing (Flores‐Abad, Ma, Pham, & Ulrich, ).…”
Section: Introductionmentioning
confidence: 99%
“…In the context of close‐proximity space navigation, the sensors typically used are electro‐optical with the majority of current solutions relying on passive sensors using visual or infrared (IR; thermal) sensing devices in a monocular or stereo camera configuration, or alternatively three‐dimensional (3D) LIDAR for active systems (Opromolla, Fasano, Rufino, & Grassi, ). Indeed, current space relative navigation solutions involve 2D visual data in a monocular (Krämer, Hardt, & Kuhnert, ; C. Liu & Hu, ) or a stereo camera configuration (Li, Lian, Guo, & Wang, ; Maimone, Cheng, & Matthies, ; Tykkala & Comport, ; Cheng, Maimone, & Matthies, ), two‐dimensional (2D) IR data (Yılmaz et al, ) and 3D light detection and ranging (LIDAR) data (Galante et al, ; Gómez Martínez, Giorgi, & Eissfeller, ; Naasz & Moreau, ; Opromolla, Di Fraia, Fasano, Rufino, & Grassi, ; Opromolla, Fasano, Rufino, & Grassi, ; Opromolla, Fasano, Rufino, & Grassi, ; Sell, Rhodes, Woods, Christian, & Evans, ; Song, ; Volpe, Palmerini, & Sabatini, ; Woods & Christian, ). For a comprehensive review on spaceborne sensors for spacecraft pose determination the reader is referred to Opromolla et al ().…”
Section: Introductionmentioning
confidence: 99%
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