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'Scene wheel' could help explain why eyewitness testimony is unreliable: 管家婆免费开奖大全 researchers

Researchers in 管家婆免费开奖大全's department of psychology have a created a looping series of gradually changing images, called a "scene wheel," that sheds light on how accurately people construct mental representations of visual experiences.

Researchers at the 管家婆免费开奖大全 have developed an innovative tool to aid in the investigation of how we perceive and remember visual experiences.

The new tool, called a 鈥渟cene wheel,鈥 promises to shed light on how accurately people construct mental representations of visual experiences for later retrieval 鈥 for example: how well an eyewitness recalls details of a crime or accident.

The wheel is a continuous, looping series of gradually changing images depicting typical domestic spaces: dining rooms, living rooms and bedrooms. The images are detailed and realistic, and vary continuously in subtle ways: tables subtly transform into desks, mirrors become framed pictures, walls become windows, and so on.

Gaeun Son is a PhD student
in the Faculty of Arts & Science鈥檚
department of psychology.

鈥淲e know that eyewitness testimony is not reliable,鈥 says Gaeun Son, a PhD student in the Faculty of Arts & Science鈥檚 department of psychology who is lead author of  that describes the scene wheel methodology.  

鈥淲ith the new scene wheel, we can start to characterize the specific nature of those memory failures.鈥

Son鈥檚 co-authors on the paper are Assistant Professor Michael Mack and Associate Professor Dirk Bernhardt-Walther 鈥 both in the department of psychology.

Michael Mack is an assistant professor
in the Faculty of Arts & Science鈥檚
department of psychology.

鈥淪tudying how people perceive and remember the world requires careful control of the physical stimuli presented in experiments,鈥 says Mack. 鈥淭his kind of control isn鈥檛 difficult in experiments using simple stimuli like colour. But it鈥檚 very challenging for more complex, realistic scenes.鈥

Traditional experiments in this field involve test subjects performing tasks such as identifying which colour or arrangement of graphic symbols most resembles a previously viewed colour or graphic. While these methods provide some insight, their simplicity imposes a fundamental limit to what they can reveal.

The scene wheel, by contrast, moves into a whole new experimental realm by using highly realistic images that more closely simulate our day-to-day visual experiences 鈥 all while still providing the rigorous control needed.

 

The study鈥檚 collaborators used deep-learning methods in computer vision 鈥 specifically, generative adversarial networks (GAN) 鈥 to create the images and arrange them in a continuous 鈥渟pectrum鈥 that鈥檚 analogous to a 360-degree colour wheel.

鈥淭he success of this project is all thanks to the recent revolution in deep-learning fields 鈥 especially in GANs, which is the same sort of approach used in creating so-called 鈥榙eep fake鈥 videos in which one person鈥檚 face is very realistically replaced with someone else鈥檚,鈥 Son says.

To test whether their approach worked, the researchers had subjects view a still image of a scene from the wheel for one second, followed by a blank screen. Next, the subjects were presented with a scene similar to the one they had just viewed.

The subjects then altered the second image by moving their cursor in a circle around it. As they moved their cursor, the scene changed. Subjects were asked to stop their cursor when the image matched their memory of the original image.

鈥淲ith the scene wheel, we鈥檝e provided a new experimental bridge that brings more of the richness of everyday experience into a controlled experimental setting,鈥 says Son. 鈥淲e anticipate that our method will allow researchers to test the validity of classic findings in the field that are based on experiments using simple stimuli.鈥

The approach could potentially lead to a 鈥渇ace wheel鈥 that could take the place of police lineups, which are not particularly reliable in identifying individuals.

鈥淥ur method will allow for a better understanding of how precise that identification of individuals actually is,鈥 Mack says.

The research was supported by the Natural Sciences and Engineering Research Council of Canada, the Canada Foundation for Innovation and the Ontario Research Fund.

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