Content-based Image Retrieval Based On Late Fusion Of Binary And Local Descriptors
2017 Β· Nouman Ali, Danish Ali Mazhar, Zeshan Iqbal, et al.
Abstract
One of the challenges in Content-Based Image Retrieval (CBIR) is to reduce the semantic gaps between low-level features and high-level semantic concepts. In CBIR, the images are represented in the feature space and the performance of CBIR depends on the type of selected feature representation. Late fusion also known as visual words integration is applied to enhance the performance of image retrieval. The recent advances in image retrieval diverted the focus of research towards the use of binary descriptors as they are reported computationally efficient. In this paper, we aim to investigate the late fusion of Fast Retina Keypoint (FREAK) and Scale Invariant Feature Transform (SIFT). The late fusion of binary and local descriptor is selected because among binary descriptors, FREAK has shown good results in classification-based problems while SIFT is robust to translation, scaling, rotation and small distortions. The late fusion of FREAK and SIFT integrates the performance of both feature
Authors
(none)
Tags
Stats
Related papers
- An Efficient Image Retrieval Based On Fusion Of Low-level Visual Features (2018)3.58
- Query Adaptive Late Fusion For Image Retrieval (2018)0.00
- Coarse2fine: Two-layer Fusion For Image Retrieval (2016)0.00
- Aggregating Binary Local Descriptors For Image Retrieval (2016)7.16
- Automatic Feature Weight Determination Using Indexing And Pseudo-relevance Feedback For Multi-feature Content-based Image Retrieval (2018)0.00
- Advancements In Content-based Image Retrieval: A Comprehensive Survey Of Relevance Feedback Techniques (2023)0.00
- From Selective Deep Convolutional Features To Compact Binary Representations For Image Retrieval (2018)10.35
- Texture And Color-based Image Retrieval Using The Local Extrema Features And Riemannian Distance (2016)0.00