CBIR-CNN: Content-based image retrieval on celebrity data using deep convolution neural network

被引:0
|
作者
Singh P. [1 ]
Hrisheekesha P.N. [2 ]
Singh V.K. [3 ]
机构
[1] Department of Computer Science and Engineering, Inderprastha Engineering College Ghaziabad, Ghaziabad, UP
[2] Department of Electrical Engineering, Chandigarh Group of Colleges, Landran, Chandigarh, Punjab
[3] Department of Applied Science, Inderprastha Engineering College Ghaziabad, Ghaziabad, UP
关键词
Content based image retrieval; Convolution neural network; Deep learning; Distance metric learning; Feature extraction; Machine learning; Similarity measurement; Support vector machine;
D O I
10.2174/2666255813666200129111928
中图分类号
学科分类号
摘要
Background: Finding a region of interest in an image and content-based image analysis has been a challenging task for the last two decades. With the advancement in image processing, computer vision and a huge amount of image data generation, the Content-Based Image Retrieval System (CBIR) has attracted several researchers as a common technique to manage this huge amount of data. It is an approach of searching user interest based on visual information present in an image. The requirement of high computation power and huge memory limits the deployment of the CBIR technique in real-time scenarios. Objective: In this paper, an advanced deep learning model is applied to the CBIR on facial image data. We designed a deep convolution neural network architecture where activation of the convolution layer is used for feature representation and included max-pooling as a feature reduction technique. Furthermore, our model uses partial feature mapping as image descriptor to incorporate the property that facial image contains repeated information. Methods: Existing CBIR approaches primarily consider colour, texture and low-level features for mapping and localizing image segments. While deep learning has shown high performance in numerous fields of research, its application in CBIR is still very limited. Human face contains significant information to be used in a content driven task and applicable to various applications of computer vision and multimedia systems. In this research work, a deep learning-based model has been discussed for Content-Based Image Retrieval (CBIR). In CBIR, there are two important things 1) classification and 2) retrieval of image based on similarity. For the classification purpose, a fourconvolution layer model has been proposed. For the calculation of the similarity, Euclidian distance measure has been used between the images. Results: The proposed model is completely unsupervised, and it is fast and accurate in comparison to other deep learning models applied for CBIR over the facial dataset. The proposed method provided satisfactory results from the experiment, and it outperforms other CNN-based models such as VGG16, Inception V3, ResNet50, and MobileNet. Moreover, the performance of the proposed model has been compared with pre-trained models in terms of accuracy, storage space and inference time. Conclusion: The experimental analysis over the dataset has shown promising results with more than 90% classification accuracy. © 2021 Bentham Science Publishers.
引用
收藏
页码:257 / 272
页数:15
相关论文
共 50 条
  • [41] Pre-trained convolution neural networks models for content-based medical image retrieval
    Ahmed, Ali
    Almagrabi, Alaa Omran
    Osman, Ahmed Hamza
    INTERNATIONAL JOURNAL OF ADVANCED AND APPLIED SCIENCES, 2022, 9 (12): : 11 - 24
  • [42] OtoMatch: Content-based eardrum image retrieval using deep learning
    Camalan, Seda
    Niazi, Muhammad Khalid Khan
    Moberly, Aaron C.
    Teknos, Theodoros
    Essig, Garth
    Elmaraghy, Charles
    Taj-Schaal, Nazhat
    Gurcan, Metin N.
    PLOS ONE, 2020, 15 (05):
  • [43] Content-based gastric image retrieval using convolutional neural networks
    Hu, Huiyi
    Zheng, Wenfang
    Zhang, Xu
    Zhang, Xinsen
    Liu, Jiquan
    Hu, Weiling
    Duan, Huilong
    Si, Jianmin
    INTERNATIONAL JOURNAL OF IMAGING SYSTEMS AND TECHNOLOGY, 2021, 31 (01) : 439 - 449
  • [44] Feature Extraction with Triplet Convolutional Neural Network for Content-Based Image Retrieval
    Cai, Zhiyin
    Gao, Wei
    Yu, Zhuliang
    Huang, Jinhong
    Cai, Zhaoquan
    PROCEEDINGS OF THE 2017 12TH IEEE CONFERENCE ON INDUSTRIAL ELECTRONICS AND APPLICATIONS (ICIEA), 2017, : 337 - 342
  • [45] Applying neural network to combining the heterogeneous features in content-based image retrieval
    Lee, HK
    Yoo, SI
    APPLICATIONS OF ARTIFICIAL NEURAL NETWORKS IN IMAGE PROCESSING VI, 2001, 4305 : 81 - 89
  • [46] Performance Evaluation of Content-Based Image Retrieval Using Block Truncation Coding and CNN
    Nilawar, A. P.
    Dethe, C. G.
    BIOSCIENCE BIOTECHNOLOGY RESEARCH COMMUNICATIONS, 2020, 13 (14): : 111 - 115
  • [47] Content-Based Image Retrieval Using AutoEmbedder
    Kabir, Md Mohsin
    Ishraq, Adit
    Nur, Kamruddin
    Mridha, M. F.
    JOURNAL OF ADVANCES IN INFORMATION TECHNOLOGY, 2022, 13 (03) : 240 - 248
  • [48] Content-based image retrieval using wavelets
    Flores-Pulido, L.
    Starostenko, O.
    Flores-Quechol, D.
    Rodrigues-Flores, J. I.
    Kirschning, Ingrid
    Chavez-Aragon, J. A.
    PROCEEDINGS OF THE 2ND WSEAS INTERNATIONAL CONFERENCE ON COMPUTER ENGINEERING AND APPLICATIONS: MODERN TOPICS OF COMPUTER SCIENCE, 2008, : 40 - +
  • [49] Content-based image retrieval using similarity
    Curry, RJ
    Marefat, MM
    Yang, F
    2005 INTERNATIONAL CONFERENCE ON INTEGRATION OF KNOWLEDGE INTENSIVE MULTI-AGENT SYSTEMS: KIMAS'05: MODELING, EXPLORATION, AND ENGINEERING, 2005, : 629 - 634
  • [50] A content-based image retrieval system on the mode of network
    Tang, HM
    Yu, M
    Xiao, ZT
    Guo, YC
    2000 IEEE ASIA-PACIFIC CONFERENCE ON CIRCUITS AND SYSTEMS: ELECTRONIC COMMUNICATION SYSTEMS, 2000, : 422 - 425