Relative Attribute Classification with Deep Rank SVM

09/09/2020
by   Sara Atito Ali Ahmed, et al.
0

Relative attributes indicate the strength of a particular attribute between image pairs. We introduce a deep Siamese network with rank SVM loss function, called Deep Rank SVM (DRSVM), in order to decide which one of a pair of images has a stronger presence of a specific attribute. The network is trained in an end-to-end fashion to jointly learn the visual features and the ranking function. We demonstrate the effectiveness of our approach against the state-of-the-art methods on four image benchmark datasets: LFW-10, PubFig, UTZap50K-lexi and UTZap50K-2 datasets. DRSVM surpasses state-of-art in terms of the average accuracy across attributes, on three of the four image benchmark datasets.

READ FULL TEXT

page 1

page 2

page 6

research
08/09/2016

End-to-End Localization and Ranking for Relative Attributes

We propose an end-to-end deep convolutional network to simultaneously lo...
research
12/13/2015

Deep Relative Attributes

Visual attributes are great means of describing images or scenes, in a w...
research
04/05/2017

A Computational Approach to Relative Aesthetics

Computational visual aesthetics has recently become an active research a...
research
10/28/2022

Fashion-Specific Attributes Interpretation via Dual Gaussian Visual-Semantic Embedding

Several techniques to map various types of components, such as words, at...
research
12/19/2016

Semantic Jitter: Dense Supervision for Visual Comparisons via Synthetic Images

Distinguishing subtle differences in attributes is valuable, yet learnin...
research
10/27/2020

Learning to Infer Unseen Attribute-Object Compositions

The composition recognition of unseen attribute-object is critical to ma...
research
09/24/2018

Give me a hint! Navigating Image Databases using Human-in-the-loop Feedback

In this paper, we introduce an attribute-based interactive image search ...

Please sign up or login with your details

Forgot password? Click here to reset