Abstract:Wavelet modulus maximum method can be used to recognize the features and restrai n the noise. However, some important local features would disappear in the fines t scales when using this method to recognize the whole crosssection data. The concept of characteristic scale factor was proposed to find out the differences of the features contained in the crosssection data. When the characteristic sc ale factor was larger, the numbers of the decomposable scales would become more and more, and vice versa. The crosssection data can be divided into several se ctions to be recognized respectively when the features of the crosssection dat a differed considerably. And the feature points of each section would be integra ted finally. The experimental results show that the shapescale factor can refl ect the information contained in the signal well and guide features recognition. This recognition method can ensure the integrity of the feature numbers effecti vely.