Segmentation and classification of fine art paintings
Abstract
Since the development of the rst text-based image search on the internet, the area of image
retrieval has come a long way to sophisticated content based image retrieval systems. On the other
hand, the semantic gap causes that it is still not possible to create a system which can correctly
identify any object in the image. However, this paper proposes a solution for classifying the one
sort of objects - paintings. This approach includes segmentation of the painting from the image,
creation of the descriptor le from the segmented painting, and classication of the painting by
matching its descriptor le to the created database of descriptor les of original paintings. The
segmentation of the painting is achieved with 3 preprocessing steps, followed by adjusted Hough
transformation. For the estimation of key points and creation of the descriptor le, the SIFT
(Scalable Invariant Feature Transform) or the SURF(Speeded Up Robust Features) technique is
used. The performance of both techniques is validated within the paper. The solution proposed
in this paper was tested on the database of 100 Rembrandt Harmenszoon van Rijn's paintings.