Applied Sciences (May 2022)

Reverse Image Search Using Deep Unsupervised Generative Learning and Deep Convolutional Neural Network

  • Aqsa Kiran,
  • Shahzad Ahmad Qureshi,
  • Asifullah Khan,
  • Sajid Mahmood,
  • Muhammad Idrees,
  • Aqsa Saeed,
  • Muhammad Assam,
  • Mohamad Reda A. Refaai,
  • Abdullah Mohamed

DOI
https://doi.org/10.3390/app12104943
Journal volume & issue
Vol. 12, no. 10
p. 4943

Abstract

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Reverse image search has been a vital and emerging research area of information retrieval. One of the primary research foci of information retrieval is to increase the space and computational efficiency by converting a large image database into an efficiently computed feature database. This paper proposes a novel deep learning-based methodology, which captures channel-wise, low-level details of each image. In the first phase, sparse auto-encoder (SAE), a deep generative model, is applied to RGB channels of each image for unsupervised representational learning. In the second phase, transfer learning is utilized by using VGG-16, a variant of deep convolutional neural network (CNN). The output of SAE combined with the original RGB channel is forwarded to VGG-16, thereby producing a more effective feature database by the ensemble/collaboration of two effective models. The proposed method provides an information rich feature space that is a reduced dimensionality representation of the image database. Experiments are performed on a hybrid dataset that is developed by combining three standard publicly available datasets. The proposed approach has a retrieval accuracy (precision) of 98.46%, without using the metadata of images, by using a cosine similarity measure between the query image and the image database. Additionally, to further validate the proposed methodology’s effectiveness, image quality has been degraded by adding 5% noise (Speckle, Gaussian, and Salt pepper noise types) in the hybrid dataset. Retrieval accuracy has generally been found to be 97% for different variants of noise

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