Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

A Generative Model For Zero Shot Learning Using Conditional Variational Autoencoders

About

Zero shot learning in Image Classification refers to the setting where images from some novel classes are absent in the training data but other information such as natural language descriptions or attribute vectors of the classes are available. This setting is important in the real world since one may not be able to obtain images of all the possible classes at training. While previous approaches have tried to model the relationship between the class attribute space and the image space via some kind of a transfer function in order to model the image space correspondingly to an unseen class, we take a different approach and try to generate the samples from the given attributes, using a conditional variational autoencoder, and use the generated samples for classification of the unseen classes. By extensive testing on four benchmark datasets, we show that our model outperforms the state of the art, particularly in the more realistic generalized setting, where the training classes can also appear at the test time along with the novel classes.

Ashish Mishra, M Shiva Krishna Reddy, Anurag Mittal, Hema A Murthy• 2017

Related benchmarks

TaskDatasetResultRank
Generalized Zero-Shot LearningCUB
H Score37.42
250
Generalized Zero-Shot LearningSUN
H26.7
184
Generalized Zero-Shot LearningAWA2
S Score85.29
165
Generalized Zero-Shot LearningAWA1
S Score81.35
49
Continual Generalized Zero-Shot LearningAWA2
Mean Seen Accuracy (mSA)88.36
24
Continual Generalized Zero-Shot LearningCUB
Mean Accuracy (mSA)63.16
24
Continual Generalized Zero-Shot LearningSUN
mSA37.5
23
Continual Generalized Zero-Shot LearningAWA1
mSA (Seen)85.01
22
Continual Generalized Zero-Shot LearningaPY
Seen Accuracy (mSA)78.15
22
Generalized Zero-Shot LearningaPY
Seen Accuracy77.74
19
Showing 10 of 13 rows

Other info

Follow for update