2019
DOI: 10.1109/access.2018.2890810
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Automatic Visual Features for Writer Identification: A Deep Learning Approach

Abstract: Identification of a person from his writing is one of the challenging problems; however, it is not new. No one can repudiate its applications in a number of domains, such as forensic analysis, historical documents, and ancient manuscripts. Deep learning-based approaches have proved as the best feature extractors from massive amounts of heterogeneous data and provide promising and surprising predictions of patterns as compared with traditional approaches. We apply a deep transfer convolutional neural network (C… Show more

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Cited by 77 publications
(31 citation statements)
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“…In addition to the relatively small sample size, the other important limitation of most of the studies are focused on hand crafted features due to limitation of deep learning methods on small dataset, however, automatic extraction of features could helps to increase the identification performance [13]. Deep learning methods have demonstrated tremendous success in a variety of applications in various fields [14][15][16][17][18][19], however, it is data hungry approach and requires atleast 10 times the degree of freedom that can often preclude the use of CNNs for applications where dataset can be challenging. In order to address the problem of limited training data, transfer learning could be used to tune the already grained storing knowledge on similar problem.…”
Section: Introductionmentioning
confidence: 99%
“…In addition to the relatively small sample size, the other important limitation of most of the studies are focused on hand crafted features due to limitation of deep learning methods on small dataset, however, automatic extraction of features could helps to increase the identification performance [13]. Deep learning methods have demonstrated tremendous success in a variety of applications in various fields [14][15][16][17][18][19], however, it is data hungry approach and requires atleast 10 times the degree of freedom that can often preclude the use of CNNs for applications where dataset can be challenging. In order to address the problem of limited training data, transfer learning could be used to tune the already grained storing knowledge on similar problem.…”
Section: Introductionmentioning
confidence: 99%
“…In [34], a denoising network is used to extract deep features on small patches. A transfer deep learning from ImageNet is used in [35] where deep features are extracted on small image patches and then fed to a SVM classifier. Keglevic et al [36] apply a triplet network to learn a similarity measure for image patches and the global feature is computed as the vector of locally aggregated image patch descriptors.…”
Section: Related Workmentioning
confidence: 99%
“…The deep learning technologies enable computers to take human‐like decisions and make predictions. Deep learning has been successfully applied to many applications like face recognition, speech recognition, text recognition (Naz et al, 2017), writer identification (Rehman, Naz, Razzak, & Hameed, 2019), medical disease predictions (Naseer et al, 2020; Rehman, Naz, Razzak, Akram, & Imran, 2020), machine translation, computer vision, natural language processing, etc. The CNNs deep learners have proved a tremendous success for pattern recognition applications and technologies.…”
Section: Background and Existing Workmentioning
confidence: 99%