4 results on '"Chahi, Abderrazak"'
Search Results
2. An effective and conceptually simple feature representation for off-line text-independent writer identification.
- Author
-
Chahi, Abderrazak, El merabet, Youssef, Ruichek, Yassine, and Touahni, Raja
- Subjects
- *
FEATURE extraction , *DIMENSION reduction (Statistics) , *PATTERN recognition systems , *MACHINE learning , *SYSTEMS theory - Abstract
Highlights • A novel system for off-line text-independent writer identification is proposed. • Effective feature extraction and dimensionality reduction methods are proposed. • Experiments are conducted on four challenging datasets (two English and two Arabic). • The proposed system provides high identification rates. • The proposed system demonstrates good performance stability across all the datasets. Abstract Feature engineering forms an important component of machine learning and pattern recognition. It is a fundamental process for off-line writer identification of handwritten documents, which continues to be an interesting subject of research in various forensic and authentication areas. In this work, we propose an efficient, yet computationally and conceptually simple framework for off-line text independent writer identification using local textural features in characterizing the writing style of each writer. These include Local Binary Patterns (LBP), Local Ternary Patterns (LTP), and Local Phase Quantization (LPQ). Our approach focuses on exploiting the writing images at small observation regions where a set of connected component sub-images are cropped and extracted from each handwriting sample (document or set of word/text line images). These connected components are seen as texture images where each one of them is subjected to feature extraction using LBP, LPQ, or LTP. Then, a histogram sequence concatenation is applied to the feature image after dimensionality reduction followed by image subdivision into a number of non-overlapping regions. For classification, the 1-NN (Nearest Neighbor) classifier is used to identify the writer of the questioned samples based on the dissimilarity of feature vectors computed from all components in the writing. Experiments on IFN/ENIT (411 writers/Arabic), AHTID/MW (53 writers/Arabic), CVL (309 writers/English), and IAM (657 writers/English) databases demonstrate that our proposed system outperforms old and recent state-of-the-art writer identification systems on Arabic script, and demonstrates a competitive performance on English ones. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
3. Local gradient full-scale transform patterns based off-line text-independent writer identification.
- Author
-
Chahi, Abderrazak, El merabet, Youssef, Ruichek, Yassine, and Touahni, Raja
- Subjects
HAMMING distance ,FEATURE extraction ,SYSTEM identification ,IDENTIFICATION ,AUTHORS - Abstract
Handwriting based writer identification is one of the reliable components of behavioral biometrics. A huge effort has been done in recent years to improve the writer identification performance. Our paper presents a new and effective off-line text-independent system for writer identification. Extracting features from handwriting substantially impacts the ability of the classification process to identify the query writers. With the use of suitable classifier, a well-designed and discriminative feature extraction improves the classification performance. For that, we introduce a discriminative yet simple feature method, referred to as Local gradient full-Scale Transform Patterns (LSTP). The proposed LSTP algorithm captures salient local writing structure at small regions of interest of the writing. These writing regions are termed as connected components. In the classification stage, we perform Hamming distance based NN classifier to compare and match LSTP feature vectors. The proposed framework is evaluated on 9 well-known handwritten benchmarks. Experimental results show high identification performance against the current state-of-the-art. • A novel approach for off-line text-independent writer identification is proposed. • A reliable and discriminative feature extraction method named LSTP is proposed. • Experiments are conducted on seven benchmark handwritten datasets (diverse languages). • The proposed system provides high identification rates on all the tested datasets. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
4. Cross multi-scale locally encoded gradient patterns for off-line text-independent writer identification.
- Author
-
Chahi, Abderrazak, El merabet, Youssef, Ruichek, Yassine, and Touahni, Raja
- Subjects
- *
HANDWRITING recognition (Computer science) , *PATTERN recognition systems , *DESCRIPTOR systems , *HIGH performance computing , *FEATURE extraction , *DUTCH language , *IDENTIFICATION documents - Abstract
Writer identification is experiencing a revival of activity in recent years and continues to attract great deal of attention as a challenging and important area of research in the field of forensic and authentication. In this work, we introduce a reliable off-line system for text-independent writer identification of handwritten documents. Feature engineering is an essential component of a pattern recognition system, which can enhance or decrease the classification performance. A well-designed and defined feature extraction method improves the classification task. This paper proposes, for feature extraction, an effective, yet high-quality and conceptually simple feature image descriptor referred to as Cross multi-scale Locally encoded Gradient Patterns (CLGP). The proposed CLGP feature extraction method, which is expected to better represent salient local writing structure, operates at small observation regions (i.e., connected component sub-images) of the writing sample. CLGP histogram feature vectors computed from all these observation regions in all writing samples are considered as classification inputs to identify query writers using the Nearest Neighbor Classifier (1-NN). Our system is evaluated on six standard databases (IFN/ENIT, AHTID/MW, CVL, IAM, Firemaker, and ICDAR2011) including handwritten samples in Arabic, English, French, Greek, German, and Dutch languages. Comparing the identification performance with old and recent state-of-the-art methods, the proposed system achieves the highest performance on IFN/ENIT, AHTID/MW, and ICDAR2011 databases, and demonstrates competitive performance on IAM, CVL, and Firemaker databases. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
Catalog
Discovery Service for Jio Institute Digital Library
For full access to our library's resources, please sign in.