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Hybrid Approach for Content-Based Image Retrieval using VGG16 Layered Architecture and SVM: An Application of Deep Learning

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Abstract

Advancements in the sector of computer and multimedia technology and introduction of the World Wide Web have increased the volume of image databases and collections, for example medical imageries, digital libraries, art galleries which in total contain millions of images. The retrieval process of images from such huge database by traditional methods such as Text Based Image Retrieval, Color Histogram and Chi Square Distance may take a lot of time to get the desired images. It is necessity to develop an effective image retrieval system which can handle these huge amounts of images at once. The main purpose is to build a robust system that builds, executes and responds to data in an efficient manner. A Content-Based Image Retrieval (CBIR) system has been developed as an efficient image retrieval tool where user can provide their query to the system to allow it to retrieve user’s desired image from the image collection. Moreover, the emergence of web development and transmission networks and also the number of images which are available to users continue to grow. We propose an effective deep learning framework based on Convolution Neural Networks (CNN) and Support Vector Machine (SVM) for fast image retrieval. Proposed architecture extracts features using CNN and classification using SVM. The results demonstrate the robustness of the system.

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References

  1. Wan J, Wang D, Hoi SCH, Wu P, Zhu J, Zhang Y, Li J. Deep learning for content-based image retrieval: a comprehensive study. In: ACM international conference on multimedia. 2014.

  2. Huang W, Qiang W. Image retrieval algorithm based on convolutional neural network. In: Selected paper from Common Sense Media Awards. 2017.

  3. Wang J, Li J, Wiederhold G. Simplicity: semantics-sensitive integrated matching for picture libraries. IEEE Trans Pattern Anal Mach Intell. 2001;23(9):947–63.

    Article  Google Scholar 

  4. Chen Y, Wang JZ, Li J. FIRM: fuzzily integrated region matching for content-based image retrieval. In: Proceedings of the ninth ACM international conference on multimedia. ACM. 2001. p. 543–45.

  5. http://wang.ist.psu.edu/IMAGE.

  6. Saritha RR, Paul V, Ganesh Kumar P. Content based image retrieval using deep learning process. Cluster Comput 2019;22(2):4187–200.

    Google Scholar 

  7. Mohamed O, El Asnaoui K, Mohammed O, Brahim A. Content-based image retrieval using convolutional neural networks. Original paper in Lecture Notes in Real-Time Intelligent Systems book. 2019. http://wang.ist.psu.edu/IMAGE.( Accessed Jan 2001).

  8. Desai P, Pujari J, Goudar RH. Image retrieval using wavelet based shape features. J Inform Syst Commun (JISC) 2012;3:1162–166.http://www.bioinfo.in/contents.php?id=45.

  9. Desai P, Pujari J, Parwatikar S (2011) Image retrieval using shape feature: a study. In: International conference on computaional intelligence and information technology (CIIT 2011), ACEEE, CIIT 2011, CCIS 250. Berlin: Springer; 2011. p. 817–21.

  10. Desai P, Pujari J, Ayachit NH, Kamakshi Prasad V. Content based image retrieval using hexagonal resampling and detection of ailments in MRI scans of Brain. In: Third international conference on computational intelligence and information technology, CIIT 2013 ACEEE. Elsevier. 2013.

  11. Desai P, Pujari J, Kinnikar A. Performance evaluation of image retrieval systems using shape feature based on wavelet transform. In: IEEE second international conference on cognitive computing and information processing CCIP 2016, India. IEEE. 2016. p. 1–5. https://doi.org/10.1109/CCIP.2016.7802876.

  12. Desai P, Pujari J, Kinnikar A. An image retrieval using combined approach wavelets and local binary pattern. In: International conference on informatics and analytics (ICIA-16), Aug 25th and 26th 2016, Department of computer science and engineering, Pondicherry engineering college, India. ACM digital library within its international conference proceedings series. 2016. https://doi.org/10.1145/2980258.2980404.

  13. Desai P, Pujari J, Ayachit NH, Kamakshi Prasad V. Classification of archaeological monuments for different art forms with an application to CBIR IEEE. In: International conference on advances in computing, communications and informatics (ICACCI-2013). 2013. p. 1108–12. https://doi.org/10.1109/ICACCI.2013.6637332.

  14. Sujatha C, Chivate AR, Tabib RA, Mudenagudi U. Multilevel framework for summarization of surveillance videos. In: International conference on signal and image processing (ICSIP). 2014. p. 265–70.

  15. Sujatha C, Mudenagudi U. Gaussian mixture model for summarization of surveillance videos. In: National conference on computer vision, pattern recognition, image processing and graphics (NCVPRIPG). 2015. p. 1–4.

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Correspondence to Padmashree Desai.

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This article is part of the topical collection “Data Science and Communication” guest edited by Kamesh Namudri, Naveen Chilamkurti, Sushma S J and S. Padmashree.

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Desai, P., Pujari, J., Sujatha, C. et al. Hybrid Approach for Content-Based Image Retrieval using VGG16 Layered Architecture and SVM: An Application of Deep Learning. SN COMPUT. SCI. 2, 170 (2021). https://doi.org/10.1007/s42979-021-00529-4

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