Contextual Media Retrieval Using Natural Language Queries
This addresses the challenge for mobile users to query collective visual memories with contextual natural language, though it is incremental as it builds on existing retrieval and personalization techniques.
The paper tackles the problem of retrieving images and videos from a dynamic database using spatio-temporal natural language queries, presenting the Xplore-M-Ego system that handles inter-user variability through personalization and online learning, with evaluation on a new dataset and usability study.
The widespread integration of cameras in hand-held and head-worn devices as well as the ability to share content online enables a large and diverse visual capture of the world that millions of users build up collectively every day. We envision these images as well as associated meta information, such as GPS coordinates and timestamps, to form a collective visual memory that can be queried while automatically taking the ever-changing context of mobile users into account. As a first step towards this vision, in this work we present Xplore-M-Ego: a novel media retrieval system that allows users to query a dynamic database of images and videos using spatio-temporal natural language queries. We evaluate our system using a new dataset of real user queries as well as through a usability study. One key finding is that there is a considerable amount of inter-user variability, for example in the resolution of spatial relations in natural language utterances. We show that our retrieval system can cope with this variability using personalisation through an online learning-based retrieval formulation.