A survey of document image word spotting techniques
Vast collections of documents available in image format need to be indexed for information
retrieval purposes. In this framework, word spotting is an alternative solution to optical …
retrieval purposes. In this framework, word spotting is an alternative solution to optical …
Digitization and the future of natural history collections
Natural history collections (NHCs) are the foundation of historical baselines for assessing
anthropogenic impacts on biodiversity. Along these lines, the online mobilization of …
anthropogenic impacts on biodiversity. Along these lines, the online mobilization of …
[HTML][HTML] Pre-trained convolutional neural networks as feature extractors for tuberculosis detection
UK Lopes, JF Valiati - Computers in biology and medicine, 2017 - Elsevier
It is estimated that in 2015, approximately 1.8 million people infected by tuberculosis died,
most of them in developing countries. Many of those deaths could have been prevented if …
most of them in developing countries. Many of those deaths could have been prevented if …
Improving CNN-RNN hybrid networks for handwriting recognition
The success of deep learning based models have centered around recent architectures and
the availability of large scale annotated data. In this work, we explore these two factors …
the availability of large scale annotated data. In this work, we explore these two factors …
Scrabblegan: Semi-supervised varying length handwritten text generation
Optical character recognition (OCR) systems performance have improved significantly in the
deep learning era. This is especially true for handwritten text recognition (HTR), where each …
deep learning era. This is especially true for handwritten text recognition (HTR), where each …
Transforming scholarship in the archives through handwritten text recognition: Transkribus as a case study
G Muehlberger, L Seaward, M Terras… - Journal of …, 2019 - emerald.com
Purpose An overview of the current use of handwritten text recognition (HTR) on archival
manuscript material, as provided by the EU H2020 funded Transkribus platform. It explains …
manuscript material, as provided by the EU H2020 funded Transkribus platform. It explains …
Convolutional neural networks for human activity recognition using body-worn sensors
Human activity recognition (HAR) is a classification task for recognizing human movements.
Methods of HAR are of great interest as they have become tools for measuring occurrences …
Methods of HAR are of great interest as they have become tools for measuring occurrences …
[HTML][HTML] A bibliometric analysis of off-line handwritten document analysis literature (1990–2020)
Providing computers with the ability to process handwriting is both important and
challenging, since many difficulties (eg, different writing styles, alphabets, languages, etc.) …
challenging, since many difficulties (eg, different writing styles, alphabets, languages, etc.) …
A two-stage method for text line detection in historical documents
This work presents a two-stage text line detection method for historical documents. Each
detected text line is represented by its baseline. In a first stage, a deep neural network called …
detected text line is represented by its baseline. In a first stage, a deep neural network called …
Deep generalized max pooling
V Christlein, L Spranger, M Seuret… - 2019 International …, 2019 - ieeexplore.ieee.org
Global pooling layers are an essential part of Convolutional Neural Networks (CNN). They
are used to aggregate activations of spatial locations to produce a fixed-size vector in …
are used to aggregate activations of spatial locations to produce a fixed-size vector in …