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Biosensors and Bioelectronics 2021
2021-10-22 - 2021-10-23    
All Day
Biosensors and Bioelectronics 2021 conference explores new advances and recent updated technologies. It is your high eminence that you enhance your research work in this [...]
Petrochemistry and Chemical Engineering
2021-10-25 - 2021-10-26    
All Day
Petro chemistry 2021 directs towards addressing main issues as well as future strategies of global energy industry. This is going to be the largest and [...]
Cardiac Surgery and Medical Devices
2021-10-30 - 2021-10-31    
All Day
The main focus and theme of the conference is “Reconnoitring Challenges Concerning Prediction & Prevention of Heart Diseases”. CARDIAC SURGERY 2020 strives to bring renowned [...]
Events on 2021-10-22
Events on 2021-10-25
Events on 2021-10-30
Articles

Can AI image generators producing biased results be rectified?

Experts are investigating the origins of racial and gender bias in AI-generated images, and striving to address these issues.

In 2022, Pratyusha Ria Kalluri, an AI graduate student at Stanford University in California, made a concerning discovery regarding image-generating AI programs. When she requested “a photo of an American man and his house” from a popular tool, it generated an image of a light-skinned individual in front of a large, colonial-style home. However, when she asked for “a photo of an African man and his fancy house,” it produced an image of a dark-skinned person in front of a simple mud house, despite the descriptor “fancy.”

Further investigation by Kalluri and her team revealed that image outputs from widely-used tools like Stable Diffusion by Stability AI and DALL·E by OpenAI often relied on common stereotypes. For instance, terms like ‘Africa’ were consistently associated with poverty, while descriptors like ‘poor’ were linked to darker skin tones. These tools even exacerbated biases, as seen in generated images depicting certain professions. For example, most housekeepers were portrayed as people of color and all flight attendants as women, in proportions significantly deviating from demographic realities.

Similar biases have been observed by other researchers in text-to-image generative AI models, which frequently incorporate biased and stereotypical characteristics related to gender, skin color, occupations, nationalities, and more.