Robustness of regional matching scheme over global matching scheme

作者:

摘要

Analyzing the effect of concentrated noise on a typical decision-making process of a simplified two-candidate voting model, we have demonstrated that a local approach using a regional matching process is more robust and stable than a direct approach using a global matching process, by establishing that the former is capable of accommodating a higher level of noise than the latter before the result of the decision overturns. To extend the theory to imagery analysis, we pose a conjecture that our conclusion on the robustness of the regional matching processes remains valid not only for the simpler vote counting schemes but also for practically more important decision-making schemes in image analysis which involve dimension-reducing transforms or other features extraction processes such as principal component analysis or Gablor transforms. Two convincing experimental verifications are provided, supporting not only the theory by a white-black flag recognition problem on a pixel-by-pixel basis, but also the validity of the conjecture by a facial recognition problem in the presence of localized noise typically represented by clutter or occlusion in imagery.

论文关键词:Stability,Voting,Global matching,Regional matching,Noise,Pattern recognition,Decision making

论文评审过程:Received 30 January 2001, Revised 30 November 2001, Available online 7 January 2003.

论文官网地址:https://doi.org/10.1016/S0004-3702(02)00366-1