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Can relevance of images be inferred from eye movements?

Pasupa, K., Klami, A., Saunders, C., de Campos, T. and Kaski, S. (2009) Can relevance of images be inferred from eye movements? In: 15th European Conference on Eye Movements (ECEM'2009), 23-27 August 2009, Southampton, UK. p. 50. Full text not available from this repository.

Abstract

Searching for images from a large collection is a difficult task for automated algorithms. Many current techniques rely on items which have been manually 'tagged' with descriptors. This situation is not ideal, as it is difficult to formulate the initial query, and navigate the large number of hits returned. In order to present relevant images to the user, many systems rely on an explicit feedback mechanism. A machine learning algorithm can be used to present a new set of relevant images to the user -- thus increasing hit rates. In this work we use eye movements to assist a user when performing such a task, and ask this basic question: "Is it possible to replace or complement scarce explicit feedback with implicit feedback inferred from various sensors not specifically designed for the task?" We give initial results on a range of tasks and experiments which extend those presented in the Multimedia Information Retrieval conference (MIR'08). In reasonably controlled setups, fairly simple eye movements’ features in conjunction with machine learning techniques are capable of judging the relevance of an image based on eye movements alone, without using any explicit feedback -- therefore potentially assisting the user in a task.

Item Type:Conference or Workshop Item
Creator/Authors:
Kitsuchart Pasupa
Arto Klami
Craig Saunders
Teófilo de Campos
Samuel Kaski
Research Group:Old ECS Groups > Information - Signals, Images, Systems
Alternative Locations:http://www.ecem2009.org/Completed_abstract_book.pd...
Date:24 August 2009
Information about this record:
Citations:
ID Code:17795
Last Modified:23 Sep 2011 10:38
Deposited On:24 Aug 2009 16:30 by Pasupa, Kitsuchart

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