505 research outputs found
Stroke-Based Cursive Character Recognition
International audienceHuman eye can see and read what is written or displayed either in natural handwriting or in printed format. The same work in case the machine does is called handwriting recognition. Handwriting recognition can be broken down into two categories: off-line and on-line. ..
Application and Theory of Multimedia Signal Processing Using Machine Learning or Advanced Methods
This Special Issue is a book composed by collecting documents published through peer review on the research of various advanced technologies related to applications and theories of signal processing for multimedia systems using ML or advanced methods. Multimedia signals include image, video, audio, character recognition and optimization of communication channels for networks. The specific contents included in this book are data hiding, encryption, object detection, image classification, and character recognition. Academics and colleagues who are interested in these topics will find it interesting to read
Advances in Character Recognition
This book presents advances in character recognition, and it consists of 12 chapters that cover wide range of topics on different aspects of character recognition. Hopefully, this book will serve as a reference source for academic research, for professionals working in the character recognition field and for all interested in the subject
Graphonomics and your Brain on Art, Creativity and Innovation : Proceedings of the 19th International Graphonomics Conference (IGS 2019 – Your Brain on Art)
[Italiano]: “Grafonomia e cervello su arte, creatività e innovazione”.
Un forum internazionale per discutere sui recenti progressi nell'interazione tra arti creative, neuroscienze, ingegneria, comunicazione, tecnologia, industria, istruzione, design, applicazioni forensi e mediche. I contributi hanno esaminato lo stato dell'arte, identificando sfide e opportunità , e hanno delineato le possibili linee di sviluppo di questo settore di ricerca. I temi affrontati includono: strategie integrate per la comprensione dei sistemi neurali, affettivi e cognitivi in ambienti realistici e complessi; individualità e differenziazione dal punto di vista neurale e comportamentale; neuroaesthetics (uso delle neuroscienze per spiegare e comprendere le esperienze estetiche a livello neurologico); creatività e innovazione; neuro-ingegneria e arte ispirata dal cervello, creatività e uso di dispositivi di mobile brain-body imaging (MoBI) indossabili; terapia basata su arte creativa; apprendimento informale; formazione; applicazioni forensi. / [English]: “Graphonomics and your brain on art, creativity and innovation”.
A single track, international forum for discussion on recent advances at the intersection of the creative arts, neuroscience, engineering, media, technology, industry, education, design, forensics, and medicine.
The contributions reviewed the state of the art, identified challenges and opportunities and created a roadmap for the field of graphonomics and your brain on art.
The topics addressed include: integrative strategies for understanding neural, affective and cognitive systems in realistic, complex environments; neural and behavioral individuality and variation; neuroaesthetics (the use of neuroscience to explain and understand the aesthetic experiences at the neurological level); creativity and innovation; neuroengineering and brain-inspired art, creative concepts and wearable mobile brain-body imaging (MoBI) designs; creative art therapy; informal learning; education; forensics
Off-line Arabic Handwriting Recognition System Using Fast Wavelet Transform
In this research, off-line handwriting recognition system for Arabic alphabet is
introduced. The system contains three main stages: preprocessing, segmentation and
recognition stage. In the preprocessing stage, Radon transform was used in the design
of algorithms for page, line and word skew correction as well as for word slant
correction. In the segmentation stage, Hough transform approach was used for line
extraction. For line to words and word to characters segmentation, a statistical method
using mathematic representation of the lines and words binary image was used.
Unlike most of current handwriting recognition system, our system simulates the
human mechanism for image recognition, where images are encoded and saved in
memory as groups according to their similarity to each other. Characters are
decomposed into a coefficient vectors, using fast wavelet transform, then, vectors,
that represent a character in different possible shapes, are saved as groups with one
representative for each group. The recognition is achieved by comparing a vector of
the character to be recognized with group representatives.
Experiments showed that the proposed system is able to achieve the recognition task
with 90.26% of accuracy. The system needs only 3.41 seconds a most to recognize a
single character in a text of 15 lines where each line has 10 words on average
Recognition of off-line handwritten cursive text
The author presents novel algorithms to design unconstrained handwriting
recognition systems organized in three parts:
In Part One, novel algorithms are presented for processing of Arabic text prior to
recognition. Algorithms are described to convert a thinned image of a stroke to a straight
line approximation. Novel heuristic algorithms and novel theorems are presented to
determine start and end vertices of an off-line image of a stroke. A straight line
approximation of an off-line stroke is converted to a one-dimensional representation by
a novel algorithm which aims to recover the original sequence of writing. The resulting
ordering of the stroke segments is a suitable preprocessed representation for subsequent
handwriting recognition algorithms as it helps to segment the stroke. The algorithm was
tested against one data set of isolated handwritten characters and another data set of
cursive handwriting, each provided by 20 subjects, and has been 91.9% and 91.8%
successful for these two data sets, respectively.
In Part Two, an entirely novel fuzzy set-sequential machine character recognition
system is presented. Fuzzy sequential machines are defined to work as recognizers of
handwritten strokes. An algorithm to obtain a deterministic fuzzy sequential machine from
a stroke representation, that is capable of recognizing that stroke and its variants, is
presented. An algorithm is developed to merge two fuzzy machines into one machine. The
learning algorithm is a combination of many described algorithms. The system was tested
against isolated handwritten characters provided by 20 subjects resulting in 95.8%
recognition rate which is encouraging and shows that the system is highly flexible in
dealing with shape and size variations.
In Part Three, also an entirely novel text recognition system, capable of recognizing
off-line handwritten Arabic cursive text having a high variability is presented. This system
is an extension of the above recognition system. Tokens are extracted from a onedimensional
representation of a stroke. Fuzzy sequential machines are defined to work as
recognizers of tokens. It is shown how to obtain a deterministic fuzzy sequential machine
from a token representation that is capable'of recognizing that token and its variants. An
algorithm for token learning is presented. The tokens of a stroke are re-combined to
meaningful strings of tokens. Algorithms to recognize and learn token strings are
described. The. recognition stage uses algorithms of the learning stage. The process of
extracting the best set of basic shapes which represent the best set of token strings that
constitute an unknown stroke is described. A method is developed to extract lines from
pages of handwritten text, arrange main strokes of extracted lines in the same order as
they were written, and present secondary strokes to main strokes. Presented secondary
strokes are combined with basic shapes to obtain the final characters by formulating and
solving assignment problems for this purpose. Some secondary strokes which remain
unassigned are individually manipulated. The system was tested against the handwritings
of 20 subjects yielding overall subword and character recognition rates of 55.4% and
51.1%, respectively
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