“…These models are clear with facile description and can be merged into larger models; moreover, the algorithms for manipulating them are simply applied. Hidden Markov modeling has emerged to be profitable in a number of applications such as speech recognition [1,2] , biology [3] , gesture recognition [4,5] , text processing [6] , biochemistry [7] , electrocardiographic [8] , econometrics [9] , financial stock prediction [10] , signal processing [11] , bioinformatics and genomics [12,13] , machine translation [14] and road sign detection [15] .…”