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Open AccessBook ChapterDOI

Image annotation using metric learning in semantic neighbourhoods

TLDR
2PKNN, a two-step variant of the classical K-nearest neighbour algorithm, is proposed that performs comparable to the current state-of-the-art on three challenging image annotation datasets, and shows significant improvements after metric learning.
Abstract
Automatic image annotation aims at predicting a set of textual labels for an image that describe its semantics. These are usually taken from an annotation vocabulary of few hundred labels. Because of the large vocabulary, there is a high variance in the number of images corresponding to different labels ("class-imbalance"). Additionally, due to the limitations of manual annotation, a significant number of available images are not annotated with all the relevant labels ("weak-labelling"). These two issues badly affect the performance of most of the existing image annotation models. In this work, we propose 2PKNN, a two-step variant of the classical K-nearest neighbour algorithm, that addresses these two issues in the image annotation task. The first step of 2PKNN uses "image-to-label" similarities, while the second step uses "image-to-image" similarities; thus combining the benefits of both. Since the performance of nearest-neighbour based methods greatly depends on how features are compared, we also propose a metric learning framework over 2PKNN that learns weights for multiple features as well as distances together. This is done in a large margin set-up by generalizing a well-known (single-label) classification metric learning algorithm for multi-label prediction. For scalability, we implement it by alternating between stochastic sub-gradient descent and projection steps. Extensive experiments demonstrate that, though conceptually simple, 2PKNN alone performs comparable to the current state-of-the-art on three challenging image annotation datasets, and shows significant improvements after metric learning.

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Journal ArticleDOI

Survey and experimental study on metric learning methods.

TL;DR: This paper reviews classical and influential methods that were proposed between 2003 and 2017 and presents a taxonomy based on the most distinct character of each method, including pairwise cost, probabilistic framework, boost-like approaches, advantageous variants and specific applications.
Proceedings ArticleDOI

A Cross-media Model for Automatic Image Annotation

TL;DR: A learning procedure based on Kernel Canonical Correlation Analysis is proposed which finds a mapping between visual and textual words by projecting them into a latent meaning space and is used to annotate new images using advanced nearest-neighbor voting methods.
Journal ArticleDOI

The image annotation algorithm using convolutional features from intermediate layer of deep learning

TL;DR: This paper proposes an innovative method in which the visual features of the image are presented by the intermediate layer features of deep learning, while semantic concepts are represented by mean vectors of positive samples.
Posted Content

Love Thy Neighbors: Image Annotation by Exploiting Image Metadata

TL;DR: This model uses image metadata nonparametrically to generate neighborhoods of related images using Jaccard similarities, then uses a deep neural network to blend visual information from the image and its neighbors to improve multilabel image annotation.
Proceedings ArticleDOI

Fisher Encoded Convolutional Bag-of-Windows for Efficient Image Retrieval and Social Image Tagging

TL;DR: This paper shows how to use Fisher Vectors and PCA to obtain a short and highly descriptive signature that can be used effectively for image retrieval and reports state-of-the art results for both tasks on three standard datasets.
References
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Proceedings Article

Distance Metric Learning for Large Margin Nearest Neighbor Classification

TL;DR: In this article, a Mahanalobis distance metric for k-NN classification is trained with the goal that the k-nearest neighbors always belong to the same class while examples from different classes are separated by a large margin.
Journal ArticleDOI

Distance Metric Learning for Large Margin Nearest Neighbor Classification

TL;DR: This paper shows how to learn a Mahalanobis distance metric for kNN classification from labeled examples in a globally integrated manner and finds that metrics trained in this way lead to significant improvements in kNN Classification.
Proceedings ArticleDOI

Labeling images with a computer game

TL;DR: A new interactive system: a game that is fun and can be used to create valuable output that addresses the image-labeling problem and encourages people to do the work by taking advantage of their desire to be entertained.
Journal ArticleDOI

Pegasos: primal estimated sub-gradient solver for SVM

TL;DR: A simple and effective stochastic sub-gradient descent algorithm for solving the optimization problem cast by Support Vector Machines, which is particularly well suited for large text classification problems, and demonstrates an order-of-magnitude speedup over previous SVM learning methods.
Book ChapterDOI

Object Recognition as Machine Translation: Learning a Lexicon for a Fixed Image Vocabulary

TL;DR: This work shows how to cluster words that individually are difficult to predict into clusters that can be predicted well, and cannot predict the distinction between train and locomotive using the current set of features, but can predict the underlying concept.
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