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From the start he gave the channel weight (and I am not referring to his physical size), providing it with authority and credibility.
In [9], the authors proposed a practical approach for selecting users with orthogonal channel weight vector (CWV).
w k =[w 1k w 2k ] T is the Tx channel weight vector that maximizes the received energy for the desired user.
This means that the channel coefficients h l [ k] are the samples of the overall channel weight function h τ,t), which is given by the convolution of gTx , c τ,t), and gRx.
For semi-blind algorithm, we adopt the AR(1) process to model the slow rayleigh fading channels, where the channel weight vector varies as [23]: h(n)=α h(n−1)+q(n) and where α=J0(2π fdTs) and q is a complex normal vector with covariance matrix (1−α2)I.
Hindlimb weight bearing was determined using an incapacitance tester (Linton, Norfolk, UK) consisting of a dual channel weight averager.
Similar(6)
Eight channels were selected for further processing using channel weighting.
Furthermore, an improved timing synchronization and carrier frequency recovery based on channel weighting was developed.
The authors computed the channel weights on the fly using patient specific history and clinically derived prior channel importance.
Furthermore, it was reported that the performance of the channel weighting algorithm was proportional to the subject observation time.
They presented an online neonate seizure detection framework based on EEG channel weighting and moving average filtering as illustrated in Fig. 10.
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