Nothing Special   »   [go: up one dir, main page]

skip to main content
research-article

Texture image retrieval based on fusion of local and global features

Published: 01 April 2022 Publication History

Abstract

Neither a single local feature nor a single global feature can completely characterize image information, and fusion of two or more complementary features can effectively improve retrieval performance in image retrieval. In this paper, a texture image retrieval method is proposed by fusing global and local features in the spatial domain and the transform domain. In the spatial domain, the local binary pattern (LBP) value of the image is calculated, and the histogram is established as the feature. In the transform domain, the dual-tree complex wavelet transform (DTCWT) is selected to decompose the image into sub-bands, in which the low-frequency approximate sub-band coefficients are modeled by Gaussian Mixture Model (GMM), magnitude sub-band coefficients are modeled by Gamma distribution model, and relative phase sub-band coefficients are modeled by von Mises distribution model; the LBP value of the magnitude sub-band coefficients and the improved local tetra pattern(ILTrP) value of the relative phase sub-band coefficients are calculated. According to the influence of different types of features on retrieval performance, the optimized weight coefficient is set for each type of feature, and accordingly a new similarity measurement formula is proposed. The experimental results on three different image databases of Brodatz database (DB1), MIT VisTex database (DB2) and STex (DB3) show that the average retrieval rate (ARR) of our method for databases DB1, DB2, and DB3 reaches 84.32%, 90.43% and 64.73%, respectively; and compared with the state-of-the-art methods, the ARR in DB1 increases by 1.04%, in DB2 by 0.35%, and in DB3 by 1.68%.

References

[1]
Agarwal M, Singhal A, and Lall B Multi-channel local ternary pattern for content-based image retrieval Pattern Anal Applic 2019 22 4 1585-1596
[2]
Akoushideh A and Maybodi BMN Efficient levels of spatial pyramid representation for local binary patterns IET Comput Vis 2015 9 6 871-883
[3]
Alsmadi MK Content-based image retrieval using color, shape and texture descriptors and features Arab J Sci Eng 2020 45 4 3317-3330
[4]
Aobo Z, Xianbin W, and Xin Z Texture image retrieval algorithm based on improved dual-tree complex wavelet and gray-gradient co-occurrence matrix Comput Sci 2017 044 006 274-277
[5]
Banerjee P et al. Local neighborhood intensity pattern–a new texture feature descriptor for image retrieval Expert Syst Appl 2018 113 100-115
[6]
Bhunia AK, Bhattacharyya A, Banerjee P, et al. A novel feature descriptor for image retrieval by combining modified color histogram and diagonally symmetric co-occurrence texture pattern Pattern Anal Applic 2019 23 1-21
[7]
Chhabra P, Garg NK, et al. Content-based image retrieval system using ORB and SIFT features Neural Comput Applic 2020 32 7 2725-2733
[8]
de Ves E et al. A statistical model for magnitudes and angles of wavelet frame coefficients and its application to texture retrieval Pattern Recogn 2014 47 9 2925-2939
[9]
Do MN and Vetterli M Wavelet-based texture retrieval using generalized Gaussian density and Kullback-Leibler distance IEEE Trans Image Process 2012 11 2 146-158
[10]
Gupta S, Roy PP, Dogra DP, et al. Retrieval of colour and texture images using local directional peak valley binary pattern Pattern Anal Applic 2020 23 4 1569-1585
[11]
Huang D et al. Local binary patterns and its application to facial image analysis: a survey IEEE Trans Syst, Man, Cybern, Part C (Applications and Reviews) 2011 41 6 765-781
[12]
Jiang D and Kim J Texture Image Retrieval Using DTCWT-SVD and Local Binary Pattern Features JIPS 2017 13 6 1628-1639
[13]
Karine A, El Maliani AD, and El Hassouni M A novel statistical model for content-based stereo image retrieval in the complex wavelet domain J Vis Commun Image Represent 2018 50 27-39
[14]
Kingsbury N Complex wavelets for shift invariant analysis and filtering of signals Appl Comput Harmonic Anal 2001 10 3 234-253
[15]
Kumar TGS et al (2016) Combining LBP and Contourlet features for image retrieval. Proceedings of International Conference on Communication and Signal Processing (ICCSP). IEEE:1193–1196
[16]
Kwitt R and Uhl A Lightweight probabilistic texture retrieval IEEE Trans Image Process 2009 19 1 241-253
[17]
Lasmar NE and Berthoumieu Y Gaussian copula multivariate modeling for texture image retrieval using wavelet transforms IEEE Trans Image Process 2014 23 5 2246-2261
[18]
Lasmar NE and Berthoumieu Y Gaussian copula multivariate modeling for texture image retrieval using wavelet transforms IEEE Trans Image Process 2014 23 5 2246-2261
[19]
Lei Z et al. Face recognition by exploring information jointly in space, scale, and orientation IEEE Trans Image Process 2010 20 1 247-256
[20]
Li LI, Feng L, Wu J, et al. Exploiting global and local features for image retrieval J Cent South Univ 2018 25 2 259-276
[21]
Liu P, Guo JM, Chamnongthai K, et al. Fusion of color histogram and LBP-based features for texture image retrieval and classification Inf Sci 2017 390 95-111
[22]
Murala S R. P. Maheshwari et al. local tetra patterns: a new feature descriptor for content-based image retrieval IEEE Trans Image Process 2012 21 5 2874-2886
[23]
Naghashi V Co-occurrence of adjacent sparse local ternary patterns: a feature descriptor for texture and face image retrieval Optik 2018 157 877-889
[24]
Niu PP, Tian J, Wu QC, et al. Statistical texture image retrieval in DD-DTCWT domain using magnitudes and relative phases Multimed Tools Appl 2021 80 1-21
[25]
Ojala T, Pietikäinen M, et al. A comparative study of texture measures with classification based on featured distributions. Patt Recogn,1996,29(1): 51–59.
[26]
Ojala T, Pietikainen M, and Maenpaa T Multiresolution gray-scale and rotation invariant texture classification with local binary patterns IEEE Trans Pattern Anal Mach Intell 2002 24 7 971-987
[27]
Qian X, Hua XS, Chen P, et al. PLBP: an effective local binary patterns texture descriptor with pyramid representation Pattern Recogn 2011 44 10–11 2502-2515
[28]
Qian X, Guo D, Hou X, et al. HWVP: hierarchical wavelet packet descriptors and their applications in scene categorization and semantic concept retrieval Multimed Tools Appl 2014 69 3 897-920
[29]
Raghuwanshi G and Tyagi V Texture image retrieval using hybrid directional Extrema pattern Multimed Tools Appl 2020 80 1-23
[30]
Singhal A, Agarwal M. Gaussian local ternary co-occurrence pattern for image retrieval. Advances in Systems Engineering. Springer, Singapore, 2021: 3–9.
[31]
Subrahmanyam M, Maheshwari RP, et al. Local maximum edge binary patterns: a new descriptor for image retrieval and object tracking Signal Process 2012 92 6 1467-1479
[32]
Verma M and Raman B Center symmetric local binary co-occurrence pattern for texture, face and bio-medical image retrieval J Vis Commun Image Represent 2015 32 224-236
[33]
Vo A and Oraintara S A study of relative phase in complex wavelet domain: property, statistics and applications in texture image retrieval and segmentation Signal Process Image Commun 2010 25 1 28-46
[34]
Vo A, Oraintara S, et al. Vonn distribution of relative phase for statistical image modeling in complex wavelet domain Signal Process 2011 91 1 114-125
[35]
Wei S and Yupu Z Enhanced rotation invariant LBP algorithm and its application in image retrieval CompSci 2019 46 7 263-267
[36]
Yang H, Liang L, Zhang C, et al. Weibull statistical modeling for textured image retrieval using nonsubsampled contourlet transform Soft Comput 2019 23 13 4749-4764
[37]
Yang J, Yongfu L, Wang R, et al. Texture image retrieval method based on double generalized Gaussian model and multi-scale fusion J Electron Inf Technol 2016 38 11 2856-2863
[38]
Zhou J, Liu X, Liu W, et al. Image retrieval based on effective feature extraction and diffusion process Multimed Tools Appl 2019 78 5 6163-6190

Cited By

View all
  • (2023)ELGONBP: A grouped neighboring intensity difference encoding for texture classificationMultimedia Tools and Applications10.1007/s11042-022-13634-082:7(10311-10336)Online publication date: 1-Mar-2023

Index Terms

  1. Texture image retrieval based on fusion of local and global features
          Index terms have been assigned to the content through auto-classification.

          Recommendations

          Comments

          Please enable JavaScript to view thecomments powered by Disqus.

          Information & Contributors

          Information

          Published In

          cover image Multimedia Tools and Applications
          Multimedia Tools and Applications  Volume 81, Issue 10
          Apr 2022
          1439 pages

          Publisher

          Kluwer Academic Publishers

          United States

          Publication History

          Published: 01 April 2022
          Accepted: 25 January 2022
          Revision received: 30 August 2021
          Received: 03 June 2021

          Author Tags

          1. Feature fusion
          2. Texture image retrieval
          3. Dual tree complex wavelet transform
          4. Similarity measurement
          5. Statistical modeling

          Qualifiers

          • Research-article

          Funding Sources

          Contributors

          Other Metrics

          Bibliometrics & Citations

          Bibliometrics

          Article Metrics

          • Downloads (Last 12 months)0
          • Downloads (Last 6 weeks)0
          Reflects downloads up to 18 Nov 2024

          Other Metrics

          Citations

          Cited By

          View all
          • (2023)ELGONBP: A grouped neighboring intensity difference encoding for texture classificationMultimedia Tools and Applications10.1007/s11042-022-13634-082:7(10311-10336)Online publication date: 1-Mar-2023

          View Options

          View options

          Login options

          Media

          Figures

          Other

          Tables

          Share

          Share

          Share this Publication link

          Share on social media