Fast and scalable computations of 2D image moments

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Image moments are used in image analysis for object modelling and matching. The moment computation of a two-dimensional (2D) image involves a significant amount of multiplication and addition in a direct method. In this paper, we use the suffix sum functions to compute the gray-level image moments instead of using a direct method. This new method can reduce drastically the number of multiplications required. We first derive the mathematical relationships between moment computations and suffix sums. Based on the derived mathematical relationships, four new parallel algorithms for computing image moments are derived on various computational models. By integrating the advantages of both optical transmission and electronic computation, the 2D image moments can be computed in constant time on a 2D array with reconfigurable optical buses. The performance comparison shows that the proposed method is fast and efficient. In addition, three scalable and cost optimal algorithms are derived on the AROB, the hypercube computer and the EREW PRAM model.

论文关键词:Image moments,Moment invariants,Suffix sums,Scalable algorithm,Pattern recognition,Reconfigurable optical buses

论文评审过程:Received 6 March 2006, Revised 31 March 2007, Accepted 23 August 2007, Available online 1 September 2007.

论文官网地址:https://doi.org/10.1016/j.imavis.2007.08.016