A Bayesian framework for deformable pattern classification has been proposed in [1] with promising results for isolated handwritten character recognition. Its performance, however, degrades significantly when it is applied to detect deformable patterns in complex scenes, where the amount of outliers due to other neighboring objects or the background is usually large. Also, the fact that the associated evidence measure does not penalize models resting on white space results in a high false alarm rate. In this paper, another Bayesian framework for deformable pattern detection is proposed. The framework possesses the intrinsic property of matching with only part of an image (segmentation) and its associated evidence measure can penalize white ...
Different instances of a handwritten word consist of the same basic features (humps, cusps, crossing...
The research described in this paper focuses on the presentation of two novel preprocessing techniqu...
AbstractÐIn this paper, a new analytic scheme, which uses a sequence of segmentation and recognition...
Model-based object recognition is a process in which an a priori model is searched for in an input i...
Deformable models have recently been proposed for many pattern recognition applications due to their...
Deformable models have recently been proposed for many pattern recognition applications due to their...
Following the success of applying deformable models to feature extraction, a natural next step is to...
Summarization: We propose an approach for matching deformed and occluded shapes using dynamic progra...
Abstract—In this paper, we address the problem of word spotting using a shape-based matching scheme ...
This is the accepted version of the paper to appear at Pattern Recognition Letters (PRL). The final ...
AbstractÐA recognition system for general isolated offline handwritten words using an approximate se...
Handwritten historical manuscripts traditionally have been manually transcribed for the purpose of p...
Throughout history, handwriting has been the primary means of recording information that is persever...
TR-COSC 07/01This paper provides a survey of techniques for pattern matching in compressed text and ...
Abstract—In this paper, we propose a method for spotting keywords in images of handwritten text. Rel...
Different instances of a handwritten word consist of the same basic features (humps, cusps, crossing...
The research described in this paper focuses on the presentation of two novel preprocessing techniqu...
AbstractÐIn this paper, a new analytic scheme, which uses a sequence of segmentation and recognition...
Model-based object recognition is a process in which an a priori model is searched for in an input i...
Deformable models have recently been proposed for many pattern recognition applications due to their...
Deformable models have recently been proposed for many pattern recognition applications due to their...
Following the success of applying deformable models to feature extraction, a natural next step is to...
Summarization: We propose an approach for matching deformed and occluded shapes using dynamic progra...
Abstract—In this paper, we address the problem of word spotting using a shape-based matching scheme ...
This is the accepted version of the paper to appear at Pattern Recognition Letters (PRL). The final ...
AbstractÐA recognition system for general isolated offline handwritten words using an approximate se...
Handwritten historical manuscripts traditionally have been manually transcribed for the purpose of p...
Throughout history, handwriting has been the primary means of recording information that is persever...
TR-COSC 07/01This paper provides a survey of techniques for pattern matching in compressed text and ...
Abstract—In this paper, we propose a method for spotting keywords in images of handwritten text. Rel...
Different instances of a handwritten word consist of the same basic features (humps, cusps, crossing...
The research described in this paper focuses on the presentation of two novel preprocessing techniqu...
AbstractÐIn this paper, a new analytic scheme, which uses a sequence of segmentation and recognition...