This paper explores the use of multi-bit quantisation of image features for similarity-based image retrieval. Our work builds on multi-resolution image similarity search al-gorithms which utilise one-bit representation of the largest magnitude wavelet coefficients. Given a query, images are ranked based on the number of quantised coefficients they have in common with the query. We explore the benefits of a finer-level quantisation (specifically with two bits) and one control parameter that can be chosen optimally based on the probability density of the wavelet coefficients. We show that this extension leads to significant performance improvements. I
Quantization has been widely adopted for large-scale multimedia retrieval due to its effectiveness o...
In this work, four major components of image database have been examined: image similarity, search-b...
[[abstract]]Recently, how to efficiently manage image data in multimedia databases has gotten many a...
Typically searching image collections is based on features of the images. In most cases the features...
An important task in most content-based image retrieval (CBIR) systems is similarity matching. Simil...
Abstract. Typically searching image collections is based on features of the images. In most cases th...
Within the scope of information retrieval, efficient similarity search in large document or multimed...
We present a method for searching in an image database using a query image that is similar to the in...
In content-based retrieval systems, the goal of similarity search is to identify the k most similar ...
In this paper, we present a novel indexing technique called Multiscale Similarity Indexing (MSI) to ...
This paper present a new approach to content based retrieval in image databases. The basic new idea ...
this paper, we redefine the EMD to work with multidimensional feature vectors, and show how the comp...
In this paper, we present a novel indexing technique called Multi-scale Similarity Indexing (MSI) to...
In this paper, we present a novel indexing technique called Multi-scale Similarity Indexing (MSI) to...
All in-text references underlined in blue are linked to publications on ResearchGate, letting you ac...
Quantization has been widely adopted for large-scale multimedia retrieval due to its effectiveness o...
In this work, four major components of image database have been examined: image similarity, search-b...
[[abstract]]Recently, how to efficiently manage image data in multimedia databases has gotten many a...
Typically searching image collections is based on features of the images. In most cases the features...
An important task in most content-based image retrieval (CBIR) systems is similarity matching. Simil...
Abstract. Typically searching image collections is based on features of the images. In most cases th...
Within the scope of information retrieval, efficient similarity search in large document or multimed...
We present a method for searching in an image database using a query image that is similar to the in...
In content-based retrieval systems, the goal of similarity search is to identify the k most similar ...
In this paper, we present a novel indexing technique called Multiscale Similarity Indexing (MSI) to ...
This paper present a new approach to content based retrieval in image databases. The basic new idea ...
this paper, we redefine the EMD to work with multidimensional feature vectors, and show how the comp...
In this paper, we present a novel indexing technique called Multi-scale Similarity Indexing (MSI) to...
In this paper, we present a novel indexing technique called Multi-scale Similarity Indexing (MSI) to...
All in-text references underlined in blue are linked to publications on ResearchGate, letting you ac...
Quantization has been widely adopted for large-scale multimedia retrieval due to its effectiveness o...
In this work, four major components of image database have been examined: image similarity, search-b...
[[abstract]]Recently, how to efficiently manage image data in multimedia databases has gotten many a...