The predominant statistical features selected from the eighth
scale of Morlet wavelet were given as an input to the multiclassproximal support vector machine. Totally as mentioned in section
1.0, there are totally 24 classes, all these classes are classified allat-
once using multiclass support vector machine. The kernel
parameters for classification consist of Nu, Sigma, Tolerance and
no. of iterations. Each class consists of 100 data sets and a 10 cross
validation is used for testing. The no. of iterations was fixed to 50
for the entire classification and tolerance was set to 0.0001. Table 4
shows results obtained using multiclass proximal support vector
machine for different no. of trails and also time taken for classification
in each trail. The Fig. 9 shows the% error for different trails and
Fig. 10 shows the time taken for classification for a particular trail.