Exact(3)
Compared with curvatures that are often used in localization, the distances are less sensitive to the errors introduced in manufacturing and measurement processes.
This also shows that the present technique is not sensitive to the errors in the initial estimation.
From the obtained results, it is observed that not only the previously reported methods but also the proposed method is not so sensitive to the errors in the matrix B. In the proposed method, the inverse projection for estimating the missing high-frequency components is obtained without directly using the matrix B. The previously reported methods do not also utilize the matrix B, directly.
Similar(57)
In conclusion, this study suggests the possibility of visualizing the ATB in the brain and correcting CBF so that it is less sensitive to the error sources inherent in PET examination.
As a whole, this study suggests a method for visualizing the ATB in the brain and correcting CBF that is less sensitive to the error sources in PET examination.
The system using widely linear equalization has its error performance less sensitive to the error propagation effect caused by the smaller feedback filters when compared to the system using strictly linear equalization due to the increased effectiveness of the feedforward filter in this case.
We can observe that the model predictions are less sensitive to the error in the data when regularization is applied, i.e. the variance of the model predictions are smaller.
However, we designed a bootstrap procedure [ 49] to assess how the most important relation between these variables, the one between genetic diversity (represented here by He) and LTE, was sensitive to the error present in the estimates of these variables.
Indeed, by contrast with reproduction, replication is strongly sensitive to the error catastrophe because of the recursive way it is put into action (Orgel 1963, 1970; Kirkwood and Holliday 1975; Kirkwood 1977; Dyson 1985).
Furthermore, both the contact path and the transmission error are more sensitive to the angular error than the offset error.
If so, errors will propagate on subsequent turbo iterations since the decoding algorithms are sensitive to the variance errors.
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