QWO-IRV2 Deep Learning Model for Performing Retrieval of Multi Object Images

QWO-IRV2 Deep Learning Model for Performing Retrieval of Multi Object Images

  IJETT-book-cover           
  
© 2024 by IJETT Journal
Volume-72 Issue-10
Year of Publication : 2024
Author : Sarva Naveen Kumar, Ch Sumanth Kumar
DOI : 10.14445/22315381/IJETT-V72I10P115

How to Cite?
Sarva Naveen Kumar, Ch Sumanth Kumar, "QWO-IRV2 Deep Learning Model for Performing Retrieval of Multi Object Images," International Journal of Engineering Trends and Technology, vol. 72, no. 10, pp. 149-158, 2024. Crossref, https://doi.org/10.14445/22315381/IJETT-V72I10P115

Abstract
In the present scenario, data storage in the form of images is developing over the internet and effective techniques need to be implemented for retrieval of images. A large amount of data is available for numerous applications. Content-Based Image Retrieval (CBIR) is one of the important aspects that need to be considered. The goal of the paper is to retrieve multi object images from the database, which is a difficult issue for images that contain multiple objects. To overcome the problem, a deep learning technique along with an optimization method is developed for effective retrieval of multi object images. The Deep Convolutional Neural Network (DCNN) is designed. The network designed is ResNet 101 and Inception ResNetV2 (IRV2) for extraction of different types of features for the given input data. The features extracted depend on colour, shape, texture and so on. All the features are optimized using Quantum Whale Optimization (QWO). The final step is to estimate the similarity distance between the input query image and the data of images stored. Euclidean distance is utilized to identify the similarity index or level of similarity. The experimental evaluation is performed on the Corel database. The effectiveness and efficiency of the work are portrayed by utilizing metrics like recall, specificity, precision, and accuracy. The overall accuracy obtained by the proposed model is 98.33%. The suggested work QWO-IRV2 enhances image retrieval performance on the benchmark dataset in terms of accuracy, precision, and recall.

Keywords
Content based image retrieval, Convolutional neural networks, Inception RestNet v2, Quantum whale optimization, Corel dataset.

References
[1] David Dagan Feng, Wan-Chi Siu, and Hong-Jiang Zhang, Multimedia Information Retrieval and Management, Technological Fundamentals and Applications, 1st ed., Springer Berlin, Heidelberg, pp. 1-476, 2003.
[CrossRef] [Google Scholar] [Publisher Link]
[2] Manpreet Kaur, and Sakshi Dhingra, “Comparative Analysis of Image Classification Techniques Using Statistical Features in CBIR Systems,” 2017 International Conference on I-SMAC (IoT in Social, Mobile, Analytics and Cloud) (I-SMAC), Palladam, India, pp. 265-270, 2017.
[CrossRef] [Google Scholar] [Publisher Link]
[3] Naushad Varish, and Arup Kumar Pal, “Content Based Image Retrieval Using Statistical Features of Color Histogram,” 2015 3rd International Conference on Signal Processing, Communication and Networking, Chennai, India, pp. 1-6, 2015.
[CrossRef] [Google Scholar] [Publisher Link]
[4] Meng Zhao, Huaxiang Zhang, and Jiande Sun, “A Novel Image Retrieval Method Based on Multi-Trend Structure Descriptor,” Journal of Visual Communication and Image Representation, vol. 38, pp. 73-81, 2016.
[CrossRef] [Google Scholar] [Publisher Link]
[5] Liang Zheng et al., “Fast Image Retrieval: Query Pruning and Early Termination,” IEEE Transactions on Multimedia, vol. 17, no. 5, pp. 648-659, 2015.
[CrossRef] [Google Scholar] [Publisher Link]
[6] K. Mikolajczyk, and C. Schmid, “A Performance Evaluation of Local Descriptors,” IEEE Transactions on Pattern Analysis and Machine Intelligence, vol. 27, no. 10, pp. 1615-1630, 2005.
[CrossRef] [Google Scholar] [Publisher Link]
[7] Amjad Shah et al., “Improving CBIR Accuracy Using Convolutional Neural Network for Feature Extraction,” 2017 13th International Conference on Emerging Technologies, Islamabad, Pakistan, pp. 1-5, 2017.
[CrossRef] [Google Scholar] [Publisher Link]
[8] Aasia Ali, and Sanjay Sharma, “Content Based Image Retrieval Using Feature Extraction with Machine Learning,” 2017 International Conference on Intelligent Computing and Control Systems, Madurai, India, pp. 1048-1053, 2017.
[CrossRef] [Google Scholar] [Publisher Link]
[9] Ekta Walia, and Vishal Verma, “Boosting Local Texture Descriptors with Log-Gabor Filters Response for Improved Image Retrieval,” International Journal of Multimedia Information Retrieval, vol. 5, pp. 173-184, 2016.
[CrossRef] [Google Scholar] [Publisher Link]
[10] Pradnya Vikhar, and Pravin Karde, “Improved CBIR System Using Edge Histogram Descriptor (EHD) and Support Vector Machine (SVM),” 2016 International Conference on ICT in Business Industry & Government, Indore, India, pp. 1-5, 2016.
[CrossRef] [Google Scholar] [Publisher Link]
[11] C. Benavides et al., “Face Classification by Local Texture Analisys through CBIR and SURF Points,” IEEE Latin America Transactions, vol. 14, no. 5, pp. 2418-2434, 2016.
[CrossRef] [Google Scholar] [Publisher Link]
[12] Chih-Yi Chiu, Hsin-Chih Lin, and Shi-Nine Yang, “A Fuzzy Logic CBIR System,” The 12th IEEE International Conference on Fuzzy Systems, 2003. FUZZ '03, St. Louis, MO, USA, pp. 1171-1176, 2003.
[CrossRef] [Google Scholar] [Publisher Link]
[13] Yixin Chen, J.Z. Wang, and R. Krovetz, “CLUE: Cluster-Based Retrieval of Images by Unsupervised Learning,” IEEE Transactions on Image Processing, vol. 14, no. 8, pp. 1187-1201, 2005.
[CrossRef] [Google Scholar] [Publisher Link]
[14] J. Laaksonen, M. Koskela, and E. Oja, “PicSOM-Self-Organizing Image Retrieval with MPEG-7 Content Descriptors,” IEEE Transactions on Neural Networks, vol. 13, no. 4, pp. 841-853, 2002.
[CrossRef] [Google Scholar] [Publisher Link]
[15] O. Cordón et al., “A Review on the Application of Evolutionary Computation to Information Retrieval,” International Journal of Approximate Reasoning, vol. 34, no. 2-3, pp. 241-264, 2003.
[CrossRef] [Google Scholar] [Publisher Link]
[16] Xiang-Yang Wang, Bei-Bei Zhang, and Hong-Ying Yang, “Content-Based Image Retrieval by Integrating Color and Texture Features,” Multimedia Tools and Applications, vol. 68, pp. 545-569, 2014.
[CrossRef] [Google Scholar] [Publisher Link]
[17] Jing-Ming Guo, Heri Prasetyo, and Jen-Ho Chen, “Content-Based Image Retrieval Using Error Diffusion Block Truncation Coding Features,” IEEE Transactions on Circuits and Systems for Video Technology, vol. 25, no. 3, pp. 466-481, 2015.
[CrossRef] [Google Scholar] [Publisher Link]
[18] Hong Shao et al., “Image Retrieval Based on MPEG-7 Dominant Color Descriptor,” 2008 The 9th International Conference for Young Computer Scientists, Hunan, China, pp. 753-757, 2008.
[CrossRef] [Google Scholar] [Publisher Link]
[19] Ying Liu, Dengsheng Zhang, and Guojun Lu, “Region-Based Image Retrieval with High-Level Semantics Using Decision Tree Learning,” Pattern Recognition, vol. 41, no. 8, pp. 2554-2570, 2008.
[CrossRef] [Google Scholar] [Publisher Link]
[20] Md Monirul Islam, Dengsheng Zhang, and Guojun Lu, “Automatic Categorization of Image Regions Using Dominant Color Based Vector Quantization,” 2008 Digital Image Computing: Techniques and Applications, Canberra, ACT, Australia, pp. 191-198, 2008.
[CrossRef] [Google Scholar] [Publisher Link]
[21] Zeng Jiexian, Liu Xiupeng, and Fei Yu, “Multiscale Distance Coherence Vector Algorithm for Content-Based Image Retrieval,” The Scientific World Journal, vol. 2014, no. 1, pp. 1-13, 2014.
[CrossRef] [Google Scholar] [Publisher Link]
[22] Atif Nazir et al., “Content Based Image Retrieval System by Using HSV Color Histogram, Discrete Wavelet Transform and Edge Histogram Descriptor,” 2018 International Conference on Computing, Mathematics and Engineering Technologies, Sukkur, Pakistan, pp. 1-6, 2018.
[CrossRef] [Google Scholar] [Publisher Link]
[23] Rehan Ashraf et al., “MDCBIR-MF: Multimedia Data for Content-Based Image Retrieval by Using Multiple Features,” Multimedia Tools and Applications, vol. 79, pp. 8553-8579, 2018.
[CrossRef] [Google Scholar] [Publisher Link]
[24] Yogita Mistry, D.T. Ingole, and M.D. Ingole, “Content Based Image Retrieval Using Hybrid Features and Various Distance Metric,” Journal of Electrical Systems and Information Technology, vol. 5, no. 3, pp. 878-888, 2018.
[CrossRef] [Google Scholar] [Publisher Link]
[25] Jia Li, and J.Z. Wang, “Automatic Linguistic Indexing of Pictures by a Statistical Modeling Approach,” IEEE Transactions on Pattern Analysis and Machine Intelligence, vol. 25, no. 9, pp. 1075-1088, 2003.
[CrossRef] [Google Scholar] [Publisher Link]
[26] Christian Szegedy et al., “Inception-v4, Inception-ResNet and the Impact of Residual Connections on Learning,” Proceedings of the AAAI Conference on Artificial Intelligence, vol. 31, no. 1, pp. 4278-4284, 2017.
[CrossRef] [Google Scholar] [Publisher Link]
[27] Sarva Naveen Kumar, and Ch. Sumanth Kumar, “Fusion of CNN-QCSO for Content Based Image Retrieval,” Journal of Advances in Information Technology, vol. 14, no. 4, pp. 668-673, 2023.
[CrossRef] [Google Scholar] [Publisher Link]
[28] Gnanasigamony Wiselin Jiji, and Peter Savariraj Johnson Durai Raj, “Content-Based Image Retrieval in Dermatology Using Intelligent Technique,” IET Image Process, vol. 9, no. 4, pp. 306-317, 2015.
[CrossRef] [Google Scholar] [Publisher Link]
[29] Maria Tzelepi, and Anastasios Tefas, “Fully Unsupervised Optimization of CNN Features Towards Content Based Image Retrieval,” 2018 IEEE 13th Image, Video, and Multidimensional Signal Processing Workshop (IVMSP), Aristi Village, Greece, pp. 1-5, 2018.
[CrossRef] [Google Scholar] [Publisher Link]