Large Scale Image Retrieval Using Vector of Locally Aggregated Descriptors
نویسندگان
چکیده
Vector of locally aggregated descriptors (VLAD) is a promising approach for addressing the problem of image search on a very large scale. This representation is proposed to overcome the quantization error problem faced in Bag-of-Words (BoW) representation. However, text search engines have not be used yet for indexing VLAD given that it is not a sparse vector of occurrence counts. For this reason BoW approach is still the most widely adopted method for finding images that represent the same object or location given an image as a query and a large set of images as dataset. In this paper, we propose to enable inverted files of standard text search engines to exploit VLAD representation to deal with large-scale image search scenarios. We show that the use of inverted file with VLAD significantly outperforms BoW in terms of efficiency and effectiveness on the same hardware and software infrastructure.
منابع مشابه
Geometric VLAD for Large Scale Image Search
We present a novel compact image descriptor for large scale image search. Our proposed descriptor Geometric VLAD (gVLAD) is an extension of VLAD (Vector of Locally Aggregated Descriptors) that incorporates weak geometry information into the VLAD framework. The proposed geometry cues are derived as a membership function over keypoint angles which contain evident and informative information but y...
متن کاملLocal Feature Detectors, Descriptors, and Image Representations: A Survey
With the advances in both stable interest region detectors and robust and distinctive descriptors, local featurebased image or object retrieval has become a popular research topic. The other key technology for image retrieval systems is image representation such as the bag-of-visual words (BoVW), Fisher vector, or Vector of Locally Aggregated Descriptors (VLAD) framework. In this paper, we revi...
متن کاملDistribution Entropy Boosted VLAD for Image Retrieval
Several recent works have shown that aggregating local descriptors to generate global image representation results in great efficiency for retrieval and classification tasks. The most popular method following this approach is VLAD (Vector of Locally Aggregated Descriptors). We present a novel image presentation called Distribution Entropy Boosted VLAD (EVLAD), which extends the original vector ...
متن کاملSiamese Network of Deep Fisher-Vector Descriptors for Image Retrieval
This paper addresses the problem of large scale image retrieval, with the aim of accurately ranking the similarity of a large number of images to a given query image. To achieve this, we propose a novel Siamese network. This network consists of two computational strands, each comprising of a CNN component followed by a Fisher vector component. The CNN component produces dense, deep convolutiona...
متن کاملObject-based Image Retrieval using Local Feature Extraction and Relevance Feedback
This paper addresses the problem of object-based image retrieval, by using local feature extraction and a relevance feedback mechanism for quickly narrowing down the image search process to the user needs. This approach relies on the hypothesis that semantically similar images are clustered in some feature space and, in this scenario: (i) computes image signatures that are invariant to scale an...
متن کامل