Abstract
Nowadays content-based image retrieval (CBIR) framework is drawing in consideration of numerous analysts because of far-reaching applications found in numerous territories. In this paper, a new CBIR methodology is proposed and adequacy of any CBIR framework relies upon the features extracted from a color picture. In this work, firstly find the region of interest of the image using Sobel and Canny method and later on output is applied on HSV color space, it is clear to human vision eye. For classification, neural network is used and categorized the data with class labels. The similarity distance is estimated between the query image and stored image with different similarity metrics like Manhattan distance, Euclidean distance, Chebyshev, Hamming distance and Jaccard distance. The experimental result is estimated on accuracy, precision. The experiment performed on two well-known databases i.e.: Corel-1k and Corel-5k dataset and new methodology proves the better accuracy results up to 87.33% and 68.93% respectively and improves the precision results also up to 86.36% and 68.47% respectively. In this paper, results are also extended up to 80%.




























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References
Arya, D., & Jha, J. (2016) Global and local descriptor for CBIR and image enhancement using multi-feature fusion method. International Journal of Research—GRANTHAALAYAH.
Agarwal, S., Verma, A. K., & Dixit, N. (2011). Content-based image retrieval using color edge detection and discrete wavelet transform. In International conference on issues and challenges in intelligent computing techniques (ICICT), February 7–8, 2011 (pp. 368–372)
Zinzuvadia, K. M., Tanawala, B. A., & Brahmbhatt, K. N. (2015). A survey on feature-based image retrieval using classification and relevance feedback techniques. IJIRCCE,2, 1253.
Dixit, N., Tiwari, S. K., & Sharma, P. (2016). A new algorithm for CBIR using bi-cubic interpolation with color coding and different level DWT. In 2016 IEEE (ICCUBEA) (pp. 1–6).
Kaur, M., & Dhingra, S. (2017). Comparative analysis of image classification techniques using statistical features in CBIR systems. In I-SMAC 2017 (pp. 265–270). IEEE.
Varnish, N., & Pal, A. K. (2015). Content-based image retrieval using statistical features of color histogram. In 2015 3rd international conference on signal processing, communication and networking (ICSCN). IEEE
Zhao, M., Zhang, H., & Sun, J. (2016). A novel image retrieval method based on multi-trend structure descriptor. Journal of Visual Communication and Image Representation,38, 73–81.
Zheng, L., Wang, S., Liu, Z., & Tian, Q. (2015). Fast image retrieval: Query pruning and early termination. IEEE Transactions on Multimedia,17(5), 648–659.
Mikolajczyk, K., & Schmid, C. (2005). A performance evaluation of local descriptors. IEEE Transactions on Pattern Analysis and Machine Intelligence,27(10), 1615–1630.
Shah, A., Naseeml, R., Sadia, S. I., & Shah, M. A. (2017). Improving CBIR accuracy using convolutional neural network for feature extraction. IEEE 2017 (pp 1–5).
Ali, A., & Sharma, S. (2017). Content-based image retrieval using feature extraction with machine learning. In ICICCS 2017 IEEE (pp 1048–1053).
Walia, E., & Verma, V. (2016). Boosting local texture descriptors with Log-Gabor filters response for improved image retrieval (pp. 1–12). London: Springer. https://doi.org/10.1007/s13735-016-0099-2.
Vikhar, P., & Karde, P. (2016). Improved CBIR system using edge histogram descriptor (EHD) and support vector machine (SVM). IEEE (pp. 1–5).
Benavides, C., Villegas, J., Member, IEEE, Román, G., & Avilés, C. (2016). Face classification by local texture analysis through CBIR and SURF points. IEEE Latin America Transactions,14(5), 2418–2434.
Raja, R., Sinha, T. S., Patra, R. K., & Tiwari, S. (2018). Physiological trait based biometrical authentication of human-face using LGXP and ANN techniques. International Journal of Information and Computer Security Special Issue on: “Multimedia Information Security Solutions on Social Networks,10(2/3), 303–320.
Raja, R., Sinha, T. S., & Dubey, R. P. (2015). Recognition of human-face from side-view using progressive switching pattern and soft-computing technique. Association for the advancement of modelling and simulation techniques in enterprises, Advance B (Vol. 58(1), pp. 14–34), ISSN:-1240-4543.
Kumar, S., Singh, S., & Kumar, J. (2018). Live detection of face using machine learning with multi-feature method. Wireless Personal Communication Springer Journal (SCI). https://doi.org/10.1007/s11277-018-5913-0.
Kumar, S., Singh, S., & Kumar, J. (2018). Automatic live facial expression detection using genetic algorithm with haar wavelet features and SVM. Wireless Personal Communication Springer Journal (SCI). https://doi.org/10.1007/s11277-018-5923-y.
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Raja, R., Kumar, S. & Mahmood, M.R. Color Object Detection Based Image Retrieval Using ROI Segmentation with Multi-Feature Method. Wireless Pers Commun 112, 169–192 (2020). https://doi.org/10.1007/s11277-019-07021-6
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DOI: https://doi.org/10.1007/s11277-019-07021-6