Rotation Invariant Deep CBIR
2020 Β· 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.
Authors
(none)
Tags
Stats
Related papers
- CBIR Using Features Derived By Deep Learning (2020)12.02
- Compensating For Large In-plane Rotations In Natural Images (2016)6.34
- Medical Image Retrieval Using Deep Convolutional Neural Network (2017)19.35
- Rotation Invariant Aerial Image Retrieval With Group Convolutional Metric Learning (2020)4.52
- Transform-invariant Convolutional Neural Networks For Image Classification And Search (2019)13.58
- Group Invariant Deep Representations For Image Instance Retrieval (2016)0.00
- Generating Binary Tags For Fast Medical Image Retrieval Based On Convolutional Nets And Radon Transform (2016)12.25
- Detailed Investigation Of Deep Features With Sparse Representation And Dimensionality Reduction In CBIR: A Comparative Study (2018)11.29