This paper proposes a completely unique face recognition technique that improves Huang's linear discriminant regression Classification (LDRC) formula. The first work finds a discriminant topological space by increasing the between-class reconstruction error and minimizing the within-class reconstruction error at the same time, where the reconstruction error is obtained exploitation statistical regression Classification (LRC). However, the maximization of the general between-class reconstruction error is well dominated by some giant class-specific between-class reconstruction errors, that makes the subsequent LRC incorrect. This paper Adopts a much better between-class reconstruction error measure that is obtained exploitation the cooperative Representation rather than class-specific illustration and might be thought to be the bound of all The class-specific between-class reconstruction errors. Therefore, the maximization of the cooperative between-class reconstruction error maximizes every class-specific between-class reconstruction and emphasizes the little class-specific between-class reconstruction errors, that is useful for the subsequent LRC. Intensive experiments square measure conducted and therefore the effectiveness of the planned technique is verified.