Litcius/Paper detail

Denoising in SVD-based ghost imaging

Liu-Ya Chen, Chong Wang, Xu-Yi Xiao, Cheng Ren, De-Jian Zhang, Zhuan Li, De-Zhong Cao

2022Optics Express22 citationsDOIOpen Access PDF

Abstract

By the method of singular-valued decomposition (SVD), ghost imaging (GI) reconstructs the images with high efficiency. However, a small amount of noise can greatly degrade or even destroy the object information. In this paper, we experimentally investigate the method of truncated SVD (TSVD) by selecting the first few largest singular values to enhance the image quality. The contrast-to-noise ratio and structural similarity of the images are improved with appropriate truncation ratios. To further improve the image quality, we analyze the noise effects on TSVD-based GI and introduce additional filters. TSVD-based GI may find its applications in rapid imaging under complicated environment conditions.

Topics & Concepts

Ghost imagingNoise reductionSingular value decompositionArtificial intelligenceComputer scienceNoise (video)Computer visionOpticsImage qualityTruncation (statistics)Image restorationSimilarity (geometry)Image processingImage (mathematics)Spectral imagingIterative reconstructionObject (grammar)Signal-to-noise ratio (imaging)PhysicsPattern recognition (psychology)Singular valueImage denoisingAlgorithmIntegral imagingObject detectionSpatial frequencyBackground noiseStereo imagingMathematicsImaging techniqueDecompositionRandom lasers and scattering mediaSparse and Compressive Sensing TechniquesAdvanced Optical Imaging Technologies
Denoising in SVD-based ghost imaging | Litcius