A new study found that self-driving vehicles may have a harder time detecting people with dark skin, and it could point to a bigger issue with how the technology is tested
Mar 8, 2019, 13:03 IST
Jeff Swensen/Getty Images
Autonomous vehicles may have more difficulty detecting pedestrians with dark skin than those with light skin.
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- A new study from the Georgia Institute of Technology suggests autonomous driving systems may have more difficulty detecting pedestrians with dark skin than those with light skin.
- The researchers analyzed how effective image-detection systems were at identifying light-skinned and dark-skinned pedestrians.
- On average, the image-detection systems were 5% less accurate at detecting dark-skinned pedestrians.
- The researchers suggested that the difference could result from not having enough dark-skinned pedestrians in the images used to train the systems and the systems' insufficient emphasis on learning from the smaller population of dark-skinned pedestrians.
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The researchers responsible for the study had eight image-detection systems analyze images of pedestrians. The people in the photos were separated into two groups based on how their skin tones aligned with the Fitzpatrick skin type scale, which divides skin tones into six categories. One group consisted of pedestrians who fell into one of the three lightest categories on the Fitzpatrick scale, while the other group consisted of pedestrians who fell into one of the three darkest categories on the Fitzpatrick scale.
Read more: How dummy pedestrians help test car safety systems
The image-detection systems then attempted to identify all of the pedestrians in the images, and the researchers compared the systems' abilities to detect light-skinned pedestrians versus dark-skinned pedestrians. On average, the image-detection systems were 5% less accurate at detecting dark-skinned pedestrians, even when the researchers controlled for variables that may have been able to explain the disparity, like pedestrians who were partially blocked from view or the time of day the photo was taken.
The researchers suggested that the differences in pedestrian-detection accuracy could result from not having enough dark-skinned pedestrians in the images used to train the systems, as well as the systems' insufficient emphasis on learning from the smaller population of dark-skinned pedestrians.
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