2021
DOI: 10.1016/j.mex.2021.101429
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Implementation of the directly-georeferenced hyperspectral point cloud

Abstract: Before pushbroom hyperspectral imaging (HSI) data can be applied in remote sensing applications, it must typically be preprocessed through radiometric correction, atmospheric compensation, geometric correction and spatial resampling procedures. After these preprocessing procedures, HSI data are conventionally given as georeferenced raster images. The raster data model compromises the spatial-spectral integrity of HSI data, leading to suboptimal results in various applications. Inamdar et al. (2021) developed a… Show more

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Cited by 5 publications
(6 citation statements)
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“…The developed MATLAB function is based on the DHPC_DSM_BLUR.m function developed in Inamdar et al. [25] . The purpose of the DHPC_DSM_BLUR.m function was to convolve a digital surface model with the PSF of a coarser resolution HSI dataset for data fusion.…”
Section: Matlab Functionmentioning
confidence: 99%
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“…The developed MATLAB function is based on the DHPC_DSM_BLUR.m function developed in Inamdar et al. [25] . The purpose of the DHPC_DSM_BLUR.m function was to convolve a digital surface model with the PSF of a coarser resolution HSI dataset for data fusion.…”
Section: Matlab Functionmentioning
confidence: 99%
“… [19] using the implementation from Inamdar et al. [25] . In this process, the nominal pixel size of the simulated sensor (without considering pixel summing) is first calculated based on the field of view, number of cross track pixels, integration time and speed.…”
Section: Matlab Functionmentioning
confidence: 99%
“…A maximum correlation coefficient threshold of 0.9 was applied to reduce the dimensionality of the DII data from 5,565 (all pairs) to 124. Following the methodology described in (Inamdar et al, 2021a;Inamdar et al, 2021b), the DII bands were geocorrected without raster resampling to generate a hyperspectral point cloud which assigns 3D spatial coordinates to each image spectrum without introducing the pixel duplications and loss that result from conventional nearest neighbour raster resampling. Next, in CloudCompare v2.12, the point cloud was subset to the study site and was rasterized to 25 cm pixels (empty cells were not interpolated over) to allow data visualization of the point cloud in raster data format without introducing pixel loss or duplication; NoData values were given to empty cells.…”
Section: Image Acquisition and Processingmentioning
confidence: 99%
“…For the validation points recorded in situ, the buffer diameter was calculated as the sum of the manufacturer reported accuracy for NTRIP baselines >10 km (i.e., 1 m) and the average standard deviation of the points reported by the Reach RS + unit (Elmer and Kalacska, 2021). For the pixels output from the target detection, the uncertainty buffer considered the reported spatial accuracy of the CASI imagery (2.25 m) (Elmer and Kalacska, 2021) and the effective pixel resolution, the area corresponding to the full-width half -max of the CASI's point spread function (Inamdar et al, 2021a) (i.e., 1.038 m in the across-track and 0.978 m in the along-track) as determined following (Inamdar et al, 2021b). The sum of the spatial accuracy and the effective pixel resolution resulted in elliptical uncertainty boundaries where materials contributing to each pixel's recorded signal were located.…”
Section: Accuracy Assessmentmentioning
confidence: 99%
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