In recent years, eye tracking is changing the world as we know it, but it is actually an old technology. With around 100-150 years of history behind it (depending on where you draw the line; 1), its origins precede the invention of the plane (and if you’re feeling generous, the invention of the car too).
This means that the development of the technology has been a lengthy process, from which we are now starting to see the results. The work and innovation within this sphere have yielded cutting-edge technology that is beginning to shape our future.
The use of eye tracking devices is not only opening up new ways of solving problems, or obtaining new data, but also giving rise to entirely new fields of research. Below, we’ll go through five examples of how the future is being influenced by eye tracking technology and research.
Eye Tracking in Sports (and eSports)
Eye tracking studies have historically been carried out in pristine labs with tightly controlled conditions, but that has been changing in recent years. One of the areas in which the most dramatic shift has taken place is in the application of eye tracking for researching sports.
The first study that used eye tracking to investigate how athletes compared to non-athletes (2) used a set of static slides with participants seated throughout the session. Needless to say, things have changed since then.
Recent studies use eye tracking glasses to examine active, in-game play within a variety of sports, from basketball (3), to cricket (4), to cycling (5), and even karate (6). It might come as no surprise though that the sport investigated the most with eye tracking is football (7), something that we may see the impact of in the 2018 World Cup (8). While the application of eye tracking glasses has been tightly controlled in the research above, future improvements in technology could well make this an easier process.
Looking even further into the future, eye tracking is already being applied to a new branch of sports – the competitive playing of video games, otherwise known as eSports. Studies have investigated how expert players compare to novices, in much the same way that traditional sports have been examined (9, 10).
What’s clear from recent studies is that the use of eye tracking will continue to provide tractable and practical data across a range of sports, both in the real and virtual world.
Eye Tracking in Neuroarchitecture
Neuroarchitecture, or cognitive architecture, is an emerging field that provides an empirical basis for the design choices made by architects. Rather than settling for purely theoretical debates about best practices in design, research is showing the way, and guiding the creation of an actual evidence-based design.
Researchers have used eye tracking alongside EEG to investigate participant responses to factors within the built environment such as ceiling height, room size, and lightness – critical components of architectural design (11). By understanding the fundamental attentional and cognitive reactions to buildings, research can guide better-resulting designs.
The approach of neuroarchitecture has also joined another emerging technology – that of VR (12). By creating a virtual representation of different proposed buildings, architects can quickly (and relatively cheaply) test responses, enabling them to choose the best design, rather than settling for more subjective opinions.
Pilot studies of design features are already yielding findings that can have a larger impact on how buildings are designed, from how to treat blank facades, to the use of people within architectural mockups. The future could well see more and more architectural proposals that are fueled by empiricism rather than convention.
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Eye Tracking and Medical Treatment
Medical science has often been at the forefront of scientific developments – there is a clear impetus to continue to improve and innovate medical care in any way possible. While many innovations are centered around new drug or technology development (13), other research is looking at how to improve existing care.
Research has shown how eye tracking can help predict the performance and accuracy of interpretations made by nurses when assessing vital signs in a clinical context (14). By using these findings to structure future training, or even the design of the clinical space, the method of delivering medicine could be greatly improved. These findings could furthermore be used to help improve training and bedside care, without the addition of costly new equipment.
Similar applications have also been made within the fields of dermatology (15), paediatrics (16), surgery (17), and emergency medicine (18, 19), among others. From this, it’s clear that the knowledge derived about how experts perform compared to trainees can be instrumental in many fields, and can shape future training to help improve the efficiency of healthcare (20).
Eye Tracking and Mental Health Diagnosis
Similar, but distinct to the above, is the application of eye tracking in the diagnosis of neurological disorders and diseases. While the diagnosis of autism at an early stage using eye tracking is an established and developing topic (and one that we have covered before), there remains a variety of other diseases in which diagnosis may eventually be aided by eye tracking.
Researchers such as Tseng et al (21) have used eye tracking to differentiate between children with ADHD (attention-deficit / hyperactivity disorder), FASD (fetal alcohol spectrum disorder), and children without any known neurological disorder, all from recording the children’s eye movements while they watched TV for 15 minutes.
The same study was also able to identify individuals with Parkinson’s disease with almost 90% accuracy through the same methodology. While improvements have yet to be made, the study showed the clear potential of using eye tracking as a straightforward, non-invasive diagnosis aid (22).
Data from eye tracking has also been shown to be a helpful indicator in the detection of depression (23), schizophrenia (24), and even Alzheimer’s disease (25). As research continues, it’s likely that new, more refined, and more accurate methods of identification will appear.
The increased accessibility of eye tracking devices, combined with their non-invasive and simple application means that these methodologies can be readily applied in the early diagnosis of neurological diseases and disorders – something we will certainly see more of in the near future.
Eye Tracking and Learning
Learning is often a visual process – the majority of the teaching material that we are exposed to is of a visual nature – so it appears inevitable that researchers would eventually want to look at, well, how we look at that information.
Research has focused on not only how technologies such as eye tracking can improve how we learn, but also how they can assist the learning process (26, 27). For example, research has shown how reading ability can improve across skill levels with a technique such as “repeated readings”, and also how it has a greater impact among lower-performing readers (28).
By adding an empirical basis to such interventions and techniques, the learning process can be continually refined to provide the most for learners, as new ideas can be tested against current practices (26).
The future looks like it will be shaped in numerous ways by the continued application of eye tracking technology. The above of course are not the only fields to be shaped by studying the movements of the eyes but have shown great promise to make the most of the increasingly accessible technology.
Fields of use in which eye tracking is more commonplace (psychology, advertising, human factors, etc) are also benefiting from the increased knowledge of their use, as well as the increased accessibility. The number of publications within each field using these devices continues to grow year on year.
Whichever way eye tracking is involved in increasing knowledge in the future, we know that it’s something we can look forward to.
The Complete Pocket Guide
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25.Eye tracking dysfunction in Alzheimer‐type dementia.
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