6,399 research outputs found
Zero-Shot Learning by Convex Combination of Semantic Embeddings
Several recent publications have proposed methods for mapping images into
continuous semantic embedding spaces. In some cases the embedding space is
trained jointly with the image transformation. In other cases the semantic
embedding space is established by an independent natural language processing
task, and then the image transformation into that space is learned in a second
stage. Proponents of these image embedding systems have stressed their
advantages over the traditional \nway{} classification framing of image
understanding, particularly in terms of the promise for zero-shot learning --
the ability to correctly annotate images of previously unseen object
categories. In this paper, we propose a simple method for constructing an image
embedding system from any existing \nway{} image classifier and a semantic word
embedding model, which contains the \n class labels in its vocabulary. Our
method maps images into the semantic embedding space via convex combination of
the class label embedding vectors, and requires no additional training. We show
that this simple and direct method confers many of the advantages associated
with more complex image embedding schemes, and indeed outperforms state of the
art methods on the ImageNet zero-shot learning task
f-VAEGAN-D2: A Feature Generating Framework for Any-Shot Learning
When labeled training data is scarce, a promising data augmentation approach
is to generate visual features of unknown classes using their attributes. To
learn the class conditional distribution of CNN features, these models rely on
pairs of image features and class attributes. Hence, they can not make use of
the abundance of unlabeled data samples. In this paper, we tackle any-shot
learning problems i.e. zero-shot and few-shot, in a unified feature generating
framework that operates in both inductive and transductive learning settings.
We develop a conditional generative model that combines the strength of VAE and
GANs and in addition, via an unconditional discriminator, learns the marginal
feature distribution of unlabeled images. We empirically show that our model
learns highly discriminative CNN features for five datasets, i.e. CUB, SUN, AWA
and ImageNet, and establish a new state-of-the-art in any-shot learning, i.e.
inductive and transductive (generalized) zero- and few-shot learning settings.
We also demonstrate that our learned features are interpretable: we visualize
them by inverting them back to the pixel space and we explain them by
generating textual arguments of why they are associated with a certain label.Comment: Accepted at CVPR 201
- …