N.C. Narendra, Umesh Bellur, et al.
Middleware 2005
Geometric groundtruth at the character, word, and line levels is crucial for designing and evaluating optical character recognition (OCR) algorithms. Kanungo and Haralick proposed a closed-loop methodology for generating geometric groundtruth for rescanned document images. The procedure assumed that the original image and the corresponding groundtruth were available. It automatically registered the original image to the rescanned one using four corner points and then transformed the original groundtruth using the estimated registration transformation. In this paper, we present an attributed branch-and-bound algorithm for establishing the point correspondence that uses all the data points. We group the original feature points into blobs and use corners of blobs for matching. The Euclidean distance between character centroids is used as the error metric. We conducted experiments on synthetic point sets with varying layout complexity to characterize the performance of two matching algorithms. We also report results on experiments conducted using the University of Washington dataset. Finally, we show examples of application of this methodology for generating groundtruth for microfilmed and FAXed versions of the University of Washington dataset documents. © 2002 Springer-Verlag Berlin Heidelberg.
N.C. Narendra, Umesh Bellur, et al.
Middleware 2005
Sudeep Sarkar, Kim L. Boyer
Computer Vision and Image Understanding
Jessica He, David Piorkowski, et al.
CHIWORK 2023
Hisashi Kashima, Tsuyoshi Id́e, et al.
IEICE Transactions on Information and Systems