Enhancing TableNet´s Validation: Evaluating the Accuracy of the Existing Architecture with Novel Training Data – Krishna Sai SAHUKARA
Krishna Sai SAHUKARA
Master's thesis
Enhancing TableNet´s Validation: Evaluating the Accuracy of the Existing Architecture with Novel Training Data
Abstract:
This thesis introduces a innovative approach to automatically create annotated datasets in which different table layouts are systematically generated along with corresponding ground truth coordinates to enhance table detection in images. This thesis aims to implement the ex- isting deep learning architecture (TableNet), renowned for its table detection capabilities, and assess its performance on the …moreAbstract:
This thesis introduces a innovative approach to automatically create annotated datasets in which different table layouts are systematically generated along with corresponding ground truth coordinates to enhance table detection in images. This thesis aims to implement the ex- isting deep learning architecture (TableNet), renowned for its table detection capabilities, and assess its performance on the …more
Language used: Czech
Date on which the thesis was submitted / produced: 1. 9. 2023
Thesis defence
- Supervisor: prof. Dr. Andreas Fischer
Citation record
ISO 690-compliant citation record:
SAHUKARA, Krishna Sai. \textit{Enhancing TableNet´s Validation: Evaluating the Accuracy of the Existing Architecture with Novel Training Data}. Online. Master's thesis. České Budějovice: University of South Bohemia in České Budějovice, Faculty of Science. 2023. Available from: https://theses.cz/id/057k90/.
The right form of listing the thesis as a source quoted
SAHUKARA, Krishna Sai. Enhancing TableNet´s Validation: Evaluating the Accuracy of the Existing Architecture with Novel Training Data . České Budějovice, 2023. diplomová práce (Mgr.). JIHOČESKÁ UNIVERZITA V ČESKÝCH BUDĚJOVICÍCH. Přírodovědecká fakulta
Full text of thesis
Contents of on-line thesis archive
Published in Theses:- Soubory jsou nedostupné do 1. 9. 2026
- Po tomto datu bude práce dostupná: světu
Other ways of accessing the text
Institution archiving the thesis and making it accessible: JIHOČESKÁ UNIVERZITA V ČESKÝCH BUDĚJOVICÍCH, Přírodovědecká fakultaUNIVERSITY OF SOUTH BOHEMIA IN ČESKÉ BUDĚJOVICE
Faculty of ScienceMaster programme / field:
Artificial Intelligence and Data Science / Artificial Intelligence and Data Science
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