For noisy data, it is best to relax this exact requirement.
The challenge now is how to detect those genuine changes from noisy data.
Thus, it is very important to remove noisy data before using SAM.
Thus noisy data are the probable source of the discrepancy.
This latter case is essential when fitting noisy data.
Figure 11shows the analytical deconvolution results using the same 3 sets of noisy data that were used in fig.
As before, the noisy data is generated by applying eq.
SAM is very sensitive to noisy data, which should be removed a priori.
She is a pioneer in methods for smoothing noisy data.
The ability of the deconvolution techniques to identify this second component using noisy data presents a difficult challenge.