Based on the characteristic that wavelet packet transform image can be decomposed by different scales,a flow regime identification method based on image wavelet packet information entropy feature and genetic neural network was proposed.Gas-liquid two-phase flow images were captured by digital high speed video systems in horizontal pipe.The information entropy feature from transformation coefficients were extracted using image processing techniques and multi-resolution analysis.The genetic neural network was trained using those eigenvectors,which was reduced by the principal component analysis,as flow regime samples,and the flow regime intelligent identification was realized.The test result showed that image wavelet packet information entropy feature could excellently reflect the difference between seven typical flow regimes,and the genetic neural network with genetic algorithm and BP algorithm merits were with the characteristics of fast convergence for simulation and avoidance of local minimum.The recognition possibility of the network could reach up to about 100%,and a new and effective method was presented for on-line flow regime.