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Erschienen in: Soft Computing 2/2021

18.07.2020 | Methodologies and Application

A novel two-stage optimized model for logo-based document image retrieval based on a soft computing framework

verfasst von: K. Raveendra, T. Karthikeyan, Vinothkanna Rajendran, P. V. N. Reddy

Erschienen in: Soft Computing | Ausgabe 2/2021

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Abstract

The rapid development of internet helps in organizing documents based on their specific data for large-scale organizations to small-scale organizations. Document retrieval system aims to organize the relevant documents and its information based on specific terms. The availability of information stored by organization requires inexpensive storage, and the searching mechanism needs to get the information-based documents very quickly in real time. This research aims to provide such document retrieval system through logo-based identification model to analyse and organize the documents. A two-stage optimization is implemented to obtain the proposed logo-based document retrieval system using genetic algorithm and inverted ant colony optimization. Utilization of genetic operators in document retrieval classification based on index terms reduces time consumption, and inverted ant colony optimization improves the retrieval efficiency. Parameters such as classification accuracy, precision, retrieval efficiency are observed and compared with existing conventional and hybrid models experimentally to validate the proposed model.

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Literatur
Zurück zum Zitat Alaei A, Roy PP, Pal U (2016) Logo and seal based administrative document image retrieval: a survey. Comput Sci Rev 22:47–63MathSciNetCrossRef Alaei A, Roy PP, Pal U (2016) Logo and seal based administrative document image retrieval: a survey. Comput Sci Rev 22:47–63MathSciNetCrossRef
Zurück zum Zitat Alaei F, Alaei A, Pal U, Blumenstein M (2019) A comparative study of different texture features for document image retrieval. Expert Syst Appl 121:97–114CrossRef Alaei F, Alaei A, Pal U, Blumenstein M (2019) A comparative study of different texture features for document image retrieval. Expert Syst Appl 121:97–114CrossRef
Zurück zum Zitat Bai C, Huang L, Pan X, Zheng J, Chen S (2018) Optimization of deep convolutional neural network for large scale image retrieval. Neuro Comput 303:60–67 Bai C, Huang L, Pan X, Zheng J, Chen S (2018) Optimization of deep convolutional neural network for large scale image retrieval. Neuro Comput 303:60–67
Zurück zum Zitat Bianco S, Buzzelli M, Mazzini D, Schettini R (2017) Deep learning for logo recognition. Neuro Comput 245:23–30 Bianco S, Buzzelli M, Mazzini D, Schettini R (2017) Deep learning for logo recognition. Neuro Comput 245:23–30
Zurück zum Zitat Chaieb R, Kalti K, Luqman MM, Coustaty M, Amara NEB (2017) Fuzzy generalized median graphs computation: application to content-based document retrieval. Pattern Recognit 72:266–284CrossRef Chaieb R, Kalti K, Luqman MM, Coustaty M, Amara NEB (2017) Fuzzy generalized median graphs computation: application to content-based document retrieval. Pattern Recognit 72:266–284CrossRef
Zurück zum Zitat Costa R, dos Santos M, Machado AS (2018) Fuzzy information retrieval for document recommendation. Procedia Comput Sci 139:56–63CrossRef Costa R, dos Santos M, Machado AS (2018) Fuzzy information retrieval for document recommendation. Procedia Comput Sci 139:56–63CrossRef
Zurück zum Zitat Cristani M, Bertolaso A, Scannapieco S, Tomazzoli C (2018) Future paradigms of automated processing of business documents. Int J Inf Manage 40:67–75CrossRef Cristani M, Bertolaso A, Scannapieco S, Tomazzoli C (2018) Future paradigms of automated processing of business documents. Int J Inf Manage 40:67–75CrossRef
Zurück zum Zitat Dang QB, Coustaty M, Luqman MM, Ogier JM, De Tran C (2018) New spatial-organization-based scale and rotation invariant features for heterogeneous-content camera-based document image retrieval. Pattern Recognit Lett 112:153–160CrossRef Dang QB, Coustaty M, Luqman MM, Ogier JM, De Tran C (2018) New spatial-organization-based scale and rotation invariant features for heterogeneous-content camera-based document image retrieval. Pattern Recognit Lett 112:153–160CrossRef
Zurück zum Zitat Deng D, Wang R, Hefeng W, He H, Luo X (2018) Learning deep similarity models with focus ranking for fabric image retrieval. Image Vis Comput 70:11–20CrossRef Deng D, Wang R, Hefeng W, He H, Luo X (2018) Learning deep similarity models with focus ranking for fabric image retrieval. Image Vis Comput 70:11–20CrossRef
Zurück zum Zitat Dixit UD, Shirdhonkar MS (2018) Face-based document image retrieval system. Procedia Comput Sci 132:659–668CrossRef Dixit UD, Shirdhonkar MS (2018) Face-based document image retrieval system. Procedia Comput Sci 132:659–668CrossRef
Zurück zum Zitat Djenouri Y, Belhadi A, Belkebir R (2018) Bees swarm optimization guided by data mining techniques for document information retrieval. Expert Syst Appl 94:126–136CrossRef Djenouri Y, Belhadi A, Belkebir R (2018) Bees swarm optimization guided by data mining techniques for document information retrieval. Expert Syst Appl 94:126–136CrossRef
Zurück zum Zitat Ge L-W, Zhang J, Xia Y, Chen P, Zheng C-H (2019) Deep spatial attention hashing network for image retrieval. J Vis Commun Image Represent 63:1–9CrossRef Ge L-W, Zhang J, Xia Y, Chen P, Zheng C-H (2019) Deep spatial attention hashing network for image retrieval. J Vis Commun Image Represent 63:1–9CrossRef
Zurück zum Zitat Haijiao X, Huang C, Wang D (2019) Enhancing semantic image retrieval with limited labeled examples via deep learning. Knowl-Based Syst 163:252–266CrossRef Haijiao X, Huang C, Wang D (2019) Enhancing semantic image retrieval with limited labeled examples via deep learning. Knowl-Based Syst 163:252–266CrossRef
Zurück zum Zitat Hao W, Bie R, Guo J, Meng X, Wang S (2018a) Optimized CNN based image recognition through target region selection. Optik 156:772–777CrossRef Hao W, Bie R, Guo J, Meng X, Wang S (2018a) Optimized CNN based image recognition through target region selection. Optik 156:772–777CrossRef
Zurück zum Zitat Hao W, Li Y, Bi X, Zhang L, Wang Y (2018b) Joint entropy based learning model for image retrieval. J Vis Commun Image Represent 55:415–423CrossRef Hao W, Li Y, Bi X, Zhang L, Wang Y (2018b) Joint entropy based learning model for image retrieval. J Vis Commun Image Represent 55:415–423CrossRef
Zurück zum Zitat Joby PP (2020) Expedient information retrieval system for web pages using the natural language modeling. J Artif Intell 2(02):100–110 Joby PP (2020) Expedient information retrieval system for web pages using the natural language modeling. J Artif Intell 2(02):100–110
Zurück zum Zitat Nagy G (2016) Disruptive developments in document recognition. Pattern Recognit Lett 79:106–112CrossRef Nagy G (2016) Disruptive developments in document recognition. Pattern Recognit Lett 79:106–112CrossRef
Zurück zum Zitat Pratheek VK, Vijaya Kantha V, Govindaraju KN, Guru DS (2016) Features fusion for classification of logos. Procedia Comput Sci 85:370–379CrossRef Pratheek VK, Vijaya Kantha V, Govindaraju KN, Guru DS (2016) Features fusion for classification of logos. Procedia Comput Sci 85:370–379CrossRef
Zurück zum Zitat Qureshi R, Uzair M, Khurshid K, Yan H (2019) Hyperspectral document image processing: applications challenges and future prospects. Pattern Recognit 90:12–22CrossRef Qureshi R, Uzair M, Khurshid K, Yan H (2019) Hyperspectral document image processing: applications challenges and future prospects. Pattern Recognit 90:12–22CrossRef
Zurück zum Zitat Tang P, Peng Y (2017) Exploiting distinctive topological constraint of local feature matching for logo image recognition. Neuro Comput 236:113–122 Tang P, Peng Y (2017) Exploiting distinctive topological constraint of local feature matching for logo image recognition. Neuro Comput 236:113–122
Zurück zum Zitat Yang S, Zhang J, Bo C, Wang M, Chen L (2019) Fast vehicle logo detection in complex scenes. Opt Laser Technol 110:196–201CrossRef Yang S, Zhang J, Bo C, Wang M, Chen L (2019) Fast vehicle logo detection in complex scenes. Opt Laser Technol 110:196–201CrossRef
Zurück zum Zitat Zhou M, Zeng X, Chen A (2019) Deep forest hashing for image retrieval. Pattern Recognit 95:114–127CrossRef Zhou M, Zeng X, Chen A (2019) Deep forest hashing for image retrieval. Pattern Recognit 95:114–127CrossRef
Metadaten
Titel
A novel two-stage optimized model for logo-based document image retrieval based on a soft computing framework
verfasst von
K. Raveendra
T. Karthikeyan
Vinothkanna Rajendran
P. V. N. Reddy
Publikationsdatum
18.07.2020
Verlag
Springer Berlin Heidelberg
Erschienen in
Soft Computing / Ausgabe 2/2021
Print ISSN: 1432-7643
Elektronische ISSN: 1433-7479
DOI
https://doi.org/10.1007/s00500-020-05192-0

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