Poster
in
Workshop: Deep Generative Models and Downstream Applications
Content-Based Image Retrieval from Weakly-Supervised Disentangled Representations
Luis Armando Pérez Rey · Dmitri Jarnikov · Mike Holenderski
In content-based image retrieval (CBIR), a database of images is ordered based on the similarity to a query image. Similarity criteria is usually determined with respect to a shared category e.g. whether the database images contain an object of the same type as depicted in the query. Depending on the situation, multiple similarity criteria can be relevant such as the type of object, its color, or the depicted background. Ideally, a dataset labeled with all possible criteria information is available for training a model for computing the similarity. Typically, this is not the case. In this paper, we explore the use of disentangled representations for CBIR with respect to multiple criteria. To alleviate the need for labels, the models used to create the representations are learned via weak supervision by using data organized into groups with shared information. We show that such models can attain better retrieval performances compared to unsupervised baselines.