Abstract
We propose a high-performance fully convolutional neural network (FCN) for
historical handwritten document segmentation that is designed to process a
single page in one step. The advantage of this model beside its speed is its
ability to directly learn from raw pixels instead of using preprocessing steps
e. g. feature computation or superpixel generation. We show that this network
yields better results than existing methods on different public data sets. For
evaluation of this model we introduce a novel metric that is independent of
ambiguous ground truth called Foreground Pixel Accuracy (FgPA). This pixel
based measure only counts foreground pixels in the binarized page, any
background pixel is omitted. The major advantage of this metric is, that it
enables researchers to compare different segmentation methods on their ability
to successfully segment text or pictures and not on their ability to learn and
possibly overfit the peculiarities of an ambiguous hand-made ground truth
segmentation.
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