3,617 research outputs found
Query by String word spotting based on character bi-gram indexing
In this paper we propose a segmentation-free query by string word spotting
method. Both the documents and query strings are encoded using a recently
proposed word representa- tion that projects images and strings into a common
atribute space based on a pyramidal histogram of characters(PHOC). These
attribute models are learned using linear SVMs over the Fisher Vector
representation of the images along with the PHOC labels of the corresponding
strings. In order to search through the whole page, document regions are
indexed per character bi- gram using a similar attribute representation. On top
of that, we propose an integral image representation of the document using a
simplified version of the attribute model for efficient computation. Finally we
introduce a re-ranking step in order to boost retrieval performance. We show
state-of-the-art results for segmentation-free query by string word spotting in
single-writer and multi-writer standard datasetsComment: To be published in ICDAR201
On-the-fly Historical Handwritten Text Annotation
The performance of information retrieval algorithms depends upon the
availability of ground truth labels annotated by experts. This is an important
prerequisite, and difficulties arise when the annotated ground truth labels are
incorrect or incomplete due to high levels of degradation. To address this
problem, this paper presents a simple method to perform on-the-fly annotation
of degraded historical handwritten text in ancient manuscripts. The proposed
method aims at quick generation of ground truth and correction of inaccurate
annotations such that the bounding box perfectly encapsulates the word, and
contains no added noise from the background or surroundings. This method will
potentially be of help to historians and researchers in generating and
correcting word labels in a document dynamically. The effectiveness of the
annotation method is empirically evaluated on an archival manuscript collection
from well-known publicly available datasets
Segmentation-free Word Spotting for Handwritten Arabic Documents
In this paper we present an unsupervised segmentation-free method for spotting and searching query, especially, for images documents in handwritten Arabic, for this, Histograms of Oriented Gradients (HOGs) are used as the feature vectors to represent the query and documents image. Then, we compress the descriptors with the product quantization method. Finally, a better representation of the query is obtained by using the Support Vector Machines (SVM)
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