In this paper, a new graph difussion method is presented to improve the high-level feature xtraction performance. in this method, we construct a semantic graph by describe the conceps as nodes and the concept affinities as the weights of edges, then we use the training set and its corresponding labil matrix to estimate the concept relationship, where the relationship of two concepts were measured by the inner product of its corresponding row vector. we test the method on the high-level feature extraction task of TRECVID 2009 and the experimental results show the effectiveness of the method.