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Bag-of-Features HMMs have been successfully applied to handwriting recognition and word spotting. In this paper we extend our previous work and present methods for modeling sequences of Bag-of-Features representations with Hidden Markov Models. We will discuss our previous approach that uses a pseudo-discrete model. Afterwards, we present a novel semi-continuous integration. The method is effective...
Pen-based systems are becoming more and more important due to the growing availability of touch sensitive devices in various forms and sizes. Their interfaces offer the possibility to directly interact with a system by natural handwriting. In contrast to other input modalities it is not required to switch to special modes, like software-keyboards. In this paper we propose a new method for querying...
The Bag-of-Features paradigm has enjoyed great success in computer vision as well as document image analysis applications. By far the most common approach here is to power the Bag-of-Features pipeline with SIFT descriptors which are then clustered into a visual vocabulary using Lloyd's algorithm. In contrast to using handcrafted descriptors, many researches have started to use descriptors that have...
Word spotting allows to explore document images without requiring a full transcription. In the query-by-string scenario considered in this paper, it is possible to search arbitrary keywords while only limited prior information about the documents is required. We learn context-dependent character models from a training set that is small with respect to the number of models. This is possible due to...
Handwritten historical documents pose extremely challenging problems for automatic analysis. This is due to the high variability observed in handwritten script, the use of writing styles and script types unknown today, the frequently lacking orthographic standardization, and the degradation of the respective documents. Therefore, it is currently out of question to develop general purpose handwriting...
This paper presents a novel method for combining local image features and spatial information for object classification tasks using the Bag-of-Features principle. The feature descriptor is extended by additional spatial information. Hence, similar feature descriptors do not only describe similar image patches, but similar patches in roughly the same region. Different spatial measures are evaluated...
Hidden Markov Model (HMM) is one of the most widely used classifier for text recognition. In this paper we are presenting novel sub-character HMM models for Arabic text recognition. Modeling at sub-character level allows sharing of common patterns between different contextual forms of Arabic characters as well as between different characters. The number of HMMs gets reduced considerably while still...
Recent HMM-based approaches to handwritten word spotting require large amounts of learning samples and mostly rely on a prior segmentation of the document. We propose to use Bag-of-Features HMMs in a patch-based segmentation-free framework that are estimated by a single sample. Bag-of-Features HMMs use statistics of local image feature representatives. Therefore they can be considered as a variant...
Due to the great variabilities in human writing, unconstrained handwriting recognition is still considered an open research topic. Recent trends in computer vision, however, suggest that there is still potential for better recognition by improving feature representations. In this paper we focus on feature learning by estimating and applying a statistical bag-of-features model. These models are successfully...
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