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Paired samples were generated for each patient.
Discrete samples were generated as shown in Table 7.
The clutter samples were generated with the extracted correlation properties.
Virtual samples were generated by VCCTL, using particle size distribution and phase composition as input.
Samples were generated for urban contexts, considering topography with slopes and terrain with buildings.
Standard maps of healthy and tumour samples were generated by analysis with the PDQuest software.
Speech samples were generated from two sentence groups (A and B), each comprising four sentences.
The transmitted OFDM signal waveforms (DAC samples) were generated off-line in the PC, using MATLAB.
The samples were generated from breast tissue biopsy slides, stained with hematoxylin and eosin.
In calculating a KL distance between two GMMs [30], 10,000 Monte Carlo simulation data samples were generated.
For the neighbor-joining tree, 1,000 boot-strap samples were generated to assess support for the inferred relationships.
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