Self-Driving Cars Struggle To See At Night Or In Fog But Imitating The Human Brain Can Make Them Safe
Human beings handle these quick changes very well, but if it were a self-driving car – at least one with a current artificial intelligence (AI) system behind the wheel – things could easily end in disaster.
Today's AI vision systems are extremely accurate when visibility is good. On a clear, sunny day a self-driving car can recognise pedestrians, road signs and other vehicles with precision. However, they are extremely vulnerable to environmental changes. If it rains, or gets dark or foggy, standard AI systems become blind, incapable of detecting obstacles that a human driver would spot with ease.
Our research at the University of Valencia proposes a possible solution: instead of exposing AI models to millions of images of every possible road condition, we decided to imitate biology. But biologically speaking, why can humans see so well under such a wide range of conditions?
Read more: Human vision: what we actually see – and don't see – tells us a lot about consciousness
The brain's 'volume control'In our brains, neurons do not work alone. They use a truly fascinating form of adaptation that neuroscientists call divisive normalisation.
To understand this (without getting into mathematics) we can picture it as an automated“volume control” system, with neurons working in a team. Let's say one neuron is looking at a very dark area of the field of vision, such as a black car at night. The neighbouring neurons turn up the“volume” of this weak signal, amplifying the small details to make them more visible.
If we look at a bright light, the same thing happens in reverse. The brain turns down the volume to prevent us from being dazzled.
This mechanism is what allows us to adapt and see clearly in a very wide range of conditions. But in the search for speed and accuracy, modern AI systems have neglected this biological inspiration.
Read more: AI systems and humans 'see' the world differently – and that's why AI images look so garish
AI in the driving simulatorIn our study, we processed images using some of the most widely used AI models, adding layers to simulate the brain's“volume control” mechanism. In basic terms, we forced their neurons to communicate with one another and adapt to their environment, just as our own brains do.
We wanted to see if imitating biology would make cars safer. To do this, we submitted both standard AI models and our brain-inspired modification to a series of tests. Using databases from real driving in European cities, night driving images from Switzerland, and several different virtual driving simulators, we were able to compare responses to difference levels of fog, darkness and light variation.
The results showed that imitating our own brains worked. After being trained, the two types of AI models could drive perfectly well, but once fog and darkness came into the equation, the unmodified one began to fail. It lost the ability to distinguish cars from buildings, and even from the road itself.
The AI system that was equipped with our brain-inspired mechanism, on the other hand, was robust. Even in fog or complete darkness, it performed more than 20% better than its unaltered counterpart.
We analysed, from the inside, how this new system perceived the world and found that it was doing exactly what we expected. It was capturing and enhancing the details of vehicles hidden in the fog that would otherwise be invisible. As a result, its performance became more stable in the face of changing weather conditions.
Read more: The next generation of driverless cars will have to think about what's on the road, not just see it
Learning from natureGetting society as a whole to trust AI poses major challenges, and the safety of passengers and pedestrians in self-driving cars is a major aspect of this. It is not enough for smart systems to work under ideal conditions. We need them to be completely safe in the real world, and to safeguard the lives of all road users in all weather conditions.
Our research shows that the key to making artificial intelligence safer, more robust and more adaptable may be closer than it seems. There is no need for more powerful computers or vastly greater amounts of data. Sometimes, all we need is to look at the millions of years of evolution that have shaped our own brains.
In many cases, nature has already solved some of the problems that artificial intelligence faces today. We just need to learn from it.
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