1. Applications of compressive sensing in spatial frequency domain imaging
- Author
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Hamid Dehghani, Abigail M. Spear, Alexander Bentley, Ben O. L. Mellors, and Christopher R. Howle
- Subjects
Paper ,Computer science ,compressive sensing ,Biomedical Engineering ,Special Series on Artificial Intelligence and Machine Learning in Biomedical Optics ,Iterative reconstruction ,Physical Phenomena ,Biomaterials ,Data acquisition ,Image Processing, Computer-Assisted ,Image restoration ,Signal processing ,Phantoms, Imaging ,business.industry ,Optical Imaging ,Hyperspectral imaging ,Pattern recognition ,Data Compression ,Atomic and Molecular Physics, and Optics ,Electronic, Optical and Magnetic Materials ,Data set ,spatial frequency domain imaging ,Compressed sensing ,data reduction ,Artificial intelligence ,business ,Data reduction - Abstract
Significance: Spatial frequency domain imaging (SFDI) is an imaging modality that projects spatially modulated light patterns to determine optical property maps for absorption and reduced scattering of biological tissue via a pixel-by-pixel data acquisition and analysis procedure. Compressive sensing (CS) is a signal processing methodology which aims to reproduce the original signal with a reduced number of measurements, addressing the pixel-wise nature of SFDI. These methodologies have been combined for complex heterogenous data in both the image detection and data analysis stage in a compressive sensing SFDI (cs-SFDI) approach, showing reduction in both the data acquisition and overall computational time. Aim: Application of CS in SFDI data acquisition and image reconstruction significantly improves data collection and image recovery time without loss of quantitative accuracy. Approach: cs-SFDI has been applied to an increased heterogenic sample from the AppSFDI data set (back of the hand), highlighting the increased number of CS measurements required as compared to simple phantoms to accurately obtain optical property maps. A novel application of CS to the parameter recovery stage of image analysis has also been developed and validated. Results: Dimensionality reduction has been demonstrated using the increased heterogenic sample at both the acquisition and analysis stages. A data reduction of 30% for the cs-SFDI and up to 80% for the parameter recover was achieved as compared to traditional SFDI, while maintaining an error of
- Published
- 2020