Litcius/Paper detail

Approach to reduce light field sampling redundancy for flame temperature reconstruction

Qi Qi, Md. Moinul Hossain, Jinjian Li, Biao Zhang, Jian Li, Chuanlong Xu

2021Optics Express33 citationsDOIOpen Access PDF

Abstract

Flame temperature measurement through a light field camera shows an attractive research interest due to its capabilities of obtaining spatial and angular rays' information by a single exposure. However, the sampling information collected by the light field camera is vast and most of them are redundant. The reconstruction process occupies a larger computing memory and time-consuming. We propose a novel approach i.e., feature rays under-sampling (FRUS) to reduce the light field sampling redundancy and thus improve the reconstruction efficiency. The proposed approach is evaluated through numerical and experimental studies. Effects of under-sampling methods, flame dividing voxels, noise levels and light field camera parameters are investigated. It has been observed that the proposed approach provides better anti-noise ability and reconstruction efficiency. It can be valuable not only for the flame temperature reconstruction but also for other applications such as particle image velocimetry and light field microscope.

Topics & Concepts

OpticsSampling (signal processing)Light fieldRedundancy (engineering)Computer scienceComputer visionIterative reconstructionNoise (video)Artificial intelligenceField (mathematics)Materials sciencePhysicsDetectorMathematicsImage (mathematics)Operating systemPure mathematicsCombustion and flame dynamicsImage Enhancement TechniquesRadiative Heat Transfer Studies