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Results for "disability research"

AI-Enabled Technologies for People with Disabilities: Some Key Research and Privacy/Security Challenges

MBZUAI ·

The article discusses the potential of AI-enabled assistive technologies to empower People with Disabilities (PWD), citing that over one billion people live with some form of disability globally. It highlights examples like communication tools, assistive robots, and smart visual aids, and emphasizes the need to address security and privacy concerns. The author, Ishfaq Ahmad from the University of Texas at Arlington, points out that with a growing global population, over two billion people will need assistive products by 2030. Why it matters: The piece advocates for using AI to tackle critical human rights issues and improve the lives of a significant portion of the global population in the face of increasing disability rates.

KAUST and King Salman Center for Disability Research sign research agreement

KAUST ·

KAUST and the King Salman Center for Disability Research (KSCDR) have signed an MoU to collaborate on the diagnosis, management, and treatment of disabilities affecting Saudi citizens and residents. The partnership will focus on neurodevelopmental conditions, learning disabilities, visual impairments, speech disorders, and mobility impairments. KAUST's Center of Excellence for Smart Health, launched on July 1, will be a key component, leveraging its supercomputing resources and genome sequencing capabilities. Why it matters: This partnership aims to address the increasing prevalence of chronic diseases and disabilities in Saudi Arabia, aligning with national research priorities and improving the quality of life for people with disabilities.

AI for all: Unlocking an inclusive future with technology

MBZUAI ·

The Special Olympics Global Center Summit in Abu Dhabi convened 300 advocates to discuss social inclusion for individuals with intellectual disabilities. A panel including MBZUAI's Elizabeth Churchill highlighted AI's role in inclusive technology design, especially in education. Churchill noted AI can personalize learning through tailored regimens, emotion detection, and understanding cognitive patterns. Why it matters: AI-driven personalization has potential to transform education and accessibility for children of determination and other underrepresented groups in the region.

This AI could help speech-impaired people talk to Siri and Google

MBZUAI ·

MBZUAI student Karima Kadaoui is developing machine learning algorithms to help speech-impaired individuals communicate more easily. Her project aims to create an app that translates speech impediments into understandable language, facilitating communication with others and integration with voice-enabled technologies like Siri and Google Assistant. The AI-powered app could assist individuals with conditions such as strokes and cerebral palsy, who often struggle with muscle control affecting speech clarity. Why it matters: The research addresses a critical need for inclusive AI solutions, potentially improving the quality of life for speech-impaired individuals in the region and beyond.

Learning to act in noisy contexts using deep proxy learning

MBZUAI ·

Researchers are exploring methods for evaluating the outcome of actions using off-policy observations where the context is noisy or anonymized. They employ proxy causal learning, using two noisy views of the context to recover the average causal effect of an action without explicitly modeling the hidden context. The implementation uses learned neural net representations for both action and context, and demonstrates outperformance compared to an autoencoder-based alternative. Why it matters: This research addresses a key challenge in applying AI in real-world scenarios where data privacy or bandwidth limitations necessitate working with noisy or anonymized data.

Towards Trustworthy AI: From High-dimensional Statistics to Causality

MBZUAI ·

Dr. Xinwei Sun from Microsoft Research Asia presented research on trustworthy AI, focusing on statistical learning with theoretical guarantees. The work covers methods for sparse recovery with false-discovery rate analysis and causal inference tools for robustness and explainability. Consistency and identifiability were addressed theoretically, with applications shown in medical imaging analysis. Why it matters: The research contributes to addressing key limitations of current AI models regarding explainability, reproducibility, robustness, and fairness, which are crucial for real-world applications in sensitive fields like healthcare.

Researchers Develop AI Capable of Deblurring Photos - Beebom

Inception ·

Researchers have reportedly developed an artificial intelligence system capable of deblurring photographs. This AI aims to enhance image clarity by using advanced algorithms to reconstruct sharper images from blurry inputs. The technology could significantly improve visual quality across various applications where image capture is prone to blur. Why it matters: This development contributes to the broader field of computer vision and image processing, offering potential applications in areas from surveillance to professional photography.

User-Centric Gender Rewriting

MBZUAI ·

NYU and NYU Abu Dhabi researchers are working on user-centric gender rewriting in NLP, especially for Arabic. They are building an Arabic Parallel Gender Corpus and developing models for gender rewriting tasks. The work aims to address representational harms caused by NLP systems that don't account for user preferences regarding grammatical gender. Why it matters: This research promotes fairness and inclusivity in Arabic NLP by enabling systems to generate gender-specific outputs based on user preferences, mitigating biases present in training data.