Natural images classification by multiple pixel analysis

This work describes an algorithm aimed at performing an automatic natural scene image classification. It is based on a combined analysis of chromatic and spatial features of the pixels, for the recognition of landscape and portrait scenes. Quantitative results are also presented and show the effectiveness of the combined analysis proposed. Various image processing applications can easily take advantage of the proposed solution.

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