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Rotation Invariant Deep CBIR

2020-06-21 21:09:31
Subhadip Maji, Smarajit Bose

Abstract

Introduction of Convolutional Neural Networks has improved results on almost every image-based problem and Content-Based Image Retrieval is not an exception. But the CNN features, being rotation invariant, creates problems to build a rotation-invariant CBIR system. Though rotation-invariant features can be hand-engineered, the retrieval accuracy is very low because by hand engineering only low-level features can be created, unlike deep learning models that create high-level features along with low-level features. This paper shows a novel method to build a rotational invariant CBIR system by introducing a deep learning orientation angle detection model along with the CBIR feature extraction model. This paper also highlights that this rotation invariant deep CBIR can retrieve images from a large dataset in real-time.

Abstract (translated)

URL

https://arxiv.org/abs/2006.13046

PDF

https://arxiv.org/pdf/2006.13046.pdf


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