Cognitive Systems Foresight: Human Attention and Machine Learning. (360G-Wellcome-081811_B_06_Z)

£40,626

Human observers move their eyes in order to direct their attention to important aspects of a visual scene. There are models called salience maps; they predict where the eyes will move to when looking at a scene. At present, there models do not deal with video input, nor do they predict how an observer's task will affect where they look in. In other words, there are no models for real-life viewing situations, where an observer has a specific task. We are proposing a new approach to this problem. We have access to video information from cameras used in urban surveillance, and to the operators whose job is to spot abnormal behaviour in such video inputs. We shall obtain (previously unseen) video recordings of events in UK urban streets, and display them in a simulated control room to operators familiar with the town in question. We shall monitor where they look on the bank of video screens, and also when they decide that an event is abnormal and/or requires some form of intervention, e.g. calling the police. We shall use the record of eye fixations to teach a computer system to distinguish between "normal" and "abnormal" events. In this way, we shall be able to learn what is important for humans to do such surveillance by observing their eye fixation behaviour, for a realistic (and difficult) task and set of real-life video sequences. The project is important for four reasons. First, this will be the first attempt to develop a model of human attention/eye movements which will be firmly based on realistic video input and a real task. Second, this will be the first time that a computer system is able to learn from human behaviour in this way. Third, we will learn much about the ability of trained observers to cope with a demanding task as the number of TV monitors increases. Finally, we will develop an automated system which will be able to analyse the input from any urban CCTV camera in order to alert operators to look at that video stream - at present, most CCTV video streams are not observed by anyone since there are too many cameras for the number of human observers. Therefore, an automated alerting system is greatly needed and this project constitutes the best attempt to date to produce one.

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Grant Details

Amount Awarded 40626
Applicant Surname Hogg
Approval Committee Cognitive and Higher Systems Funding Committee
Award Date 2006-12-31T00:00:00+00:00
Financial Year 2006/07
Grant Programme: Title Project Grant
Internal ID 081811/B/06/Z
Lead Applicant Prof David Hogg
Other Applicant(s) Prof Iain Gilchrist, Prof Tom Troscianko
Partnership Name Cognitive Systems
Partnership Value 40626
Planned Dates: End Date 2010-01-31T00:00:00+00:00
Planned Dates: Start Date 2007-02-01T00:00:00+00:00
Recipient Org: Country United Kingdom
Region Yorkshire and the Humber