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Artificial Intelligence

Ping Pong Robot Aces High-Speed Precision Shots

Engineers developed a ping-pong-playing robot that quickly estimates the speed and trajectory of an incoming ball and precisely hits it to a desired location on the table.

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The MIT engineers’ latest creation is a powerful and lightweight ping pong bot that returns shots with high-speed precision. This table tennis tech has come a long way since the 1980s, when researchers first started building robots to play ping pong. The problem requires a unique combination of technologies, including high-speed machine vision, fast and nimble motors and actuators, precise manipulator control, and accurate real-time prediction.

The team’s new design comprises a multijointed robotic arm that is fixed to one end of a standard ping pong table and wields a standard ping pong paddle. Aided by several high-speed cameras and a high-bandwidth predictive control system, the robot quickly estimates the speed and trajectory of an incoming ball and executes one of several swing types – loop, drive, or chop – to precisely hit the ball to a desired location on the table with various types of spin.

In tests, the engineers threw 150 balls at the robot, one after the other, from across the ping pong table. The bot successfully returned the balls with a hit rate of about 88 percent across all three swing types. The robot’s strike speed approaches the top return speeds of human players and is faster than that of other robotic table tennis designs.

The researchers have since tuned the robot’s reaction time and found the arm hits balls faster than existing systems, at velocities of 20 meters per second. Advanced human players have been known to return balls at speeds of between 21 to 25 meters per second.

“Some of the goal of this project is to say we can reach the same level of athleticism that people have,” Nguyen says. “And in terms of strike speed, we’re getting really, really close.”

The team’s design has several implications for robotics and AI research. It could be adapted to improve the speed and responsiveness of humanoid robots, particularly for search-and-rescue scenarios, or situations where a robot would need to quickly react or anticipate.

This technology also has potential applications in smart robotic training systems. A robot like this could mimic the maneuvers that an opponent would do in a game environment, in a way that helps humans play and improve.

The researchers plan to further develop their system, enabling it to cover more of the table and return a wider variety of shots. This research is supported, in part, by the Robotics and AI Institute.

Artificial Intelligence

AI Uncovers Hidden Heart Risks in CT Scans: A Game-Changer for Cardiovascular Care

What if your old chest scans—taken years ago for something unrelated—held a secret warning about your heart? A new AI tool called AI-CAC, developed by Mass General Brigham and the VA, can now comb through routine CT scans to detect hidden signs of heart disease before symptoms strike.

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The Massachusetts General Brigham researchers have developed an innovative artificial intelligence (AI) tool called AI-CAC to analyze previously collected CT scans and identify individuals with high coronary artery calcium (CAC) levels, indicating a greater risk for cardiovascular events. Their research, published in NEJM AI, demonstrated the high accuracy and predictive value of AI-CAC for future heart attacks and 10-year mortality.

Millions of chest CT scans are taken each year, often in healthy people, to screen for lung cancer or other conditions. However, this study reveals that these scans can also provide valuable information about cardiovascular risk, which has been going unnoticed. The researchers found that AI-CAC had a high accuracy rate (89.4%) at determining whether a scan contained CAC or not.

The gold standard for quantifying CAC uses “gated” CT scans, synchronized to the heartbeat to reduce motion during the scan. However, most chest CT scans obtained for routine clinical purposes are “nongated.” The researchers developed AI-CAC, a deep learning algorithm, to probe through these nongated scans and quantify CAC.

The AI-CAC model was 87.3% accurate at determining whether the score was higher or lower than 100, indicating a moderate cardiovascular risk. Importantly, AI-CAC was also predictive of 10-year all-cause mortality, with those having a CAC score over 400 having a 3.49 times higher risk of death over a 10-year period.

The researchers hope to conduct future studies in the general population and test whether the tool can assess the impact of lipid-lowering medications on CAC scores. This could lead to the implementation of AI-CAC in clinical practice, enabling physicians to engage with patients earlier, before their heart disease advances to a cardiac event.

As Dr. Raffi Hagopian, first author and cardiologist at the VA Long Beach Healthcare System, emphasized, “Using AI for tasks like CAC detection can help shift medicine from a reactive approach to the proactive prevention of disease, reducing long-term morbidity, mortality, and healthcare costs.”

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Artificial Intelligence

Uncovering Human Superpowers: How Our Brains Master Affordances that Elude AI

Scientists at the University of Amsterdam discovered that our brains automatically understand how we can move through different environments—whether it’s swimming in a lake or walking a path—without conscious thought. These “action possibilities,” or affordances, light up specific brain regions independently of what’s visually present. In contrast, AI models like ChatGPT still struggle with these intuitive judgments, missing the physical context that humans naturally grasp.

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Uncovering Human Superpowers: How Our Brains Master Affordances that Elude AI

Imagine walking through a park or swimming in a lake – it’s a natural ability we take for granted. Researchers at the University of Amsterdam have shed light on how our brains process this intuitive knowledge, and the implications are fascinating. By studying brain activity while people viewed various environments, they discovered unique patterns associated with “affordances” – opportunities for action.

In essence, when we look at a scene, our brains automatically consider what we can do in it, whether it’s walking, cycling, or swimming. This is not just a psychological concept but a measurable property of our brains. The research team, led by Iris Groen, used an MRI scanner to investigate brain activity while participants viewed images of indoor and outdoor environments.

The results were striking: certain areas in the visual cortex became active in a way that couldn’t be explained by visible objects in the image. These brain areas not only represented what could be seen but also what you can do with it – even when participants weren’t given an explicit action instruction. This means that affordance processing occurs automatically, without conscious thought.

The researchers compared these human abilities with AI models, including ChatGPT, and found that they were worse at predicting possible actions. Even the best AI models didn’t give exactly the same answers as humans, despite it being a simple task for us. This highlights how our way of seeing is deeply intertwined with how we interact with the world.

The study has significant implications for the development of reliable and efficient AI. As more sectors use AI, it’s crucial that machines not only recognize what something is but also understand what it can do. For example, a robot navigating a disaster area or a self-driving car distinguishing between a bike path and a driveway.

Moreover, the research touches on the sustainable aspect of AI. Current training methods are energy-intensive and often accessible to large tech companies. By understanding how our brains work and process information efficiently, we can make AI smarter, more economical, and more human-friendly.

The discovery of affordance processing in the brain opens up new avenues for improving AI and making it more sustainable. As we continue to explore the intricacies of human cognition, we may uncover even more human superpowers that elude AI – a fascinating prospect indeed.

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Artificial Intelligence

“Future-Proofing Workers: How Countries Are Preparing for an AI-Dominated Job Market”

AI is revolutionizing the job landscape, prompting nations worldwide to prepare their workforces for dramatic changes. A University of Georgia study evaluated 50 countries’ national AI strategies and found significant differences in how governments prioritize education and workforce training. While many jobs could disappear in the coming decades, new careers requiring advanced AI skills are emerging. Countries like Germany and Spain are leading with early education and cultural support for AI, but few emphasize developing essential human soft skills like creativity and communication—qualities AI can’t replace.

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The article “Future-Proofing Workers: How Countries Are Preparing for an AI-Dominated Job Market” highlights the impact of artificial intelligence on the workforce and explores how different countries are preparing for this shift.

According to research from the University of Georgia, almost half of today’s jobs could vanish over the next 20 years due to the growth of AI. However, governments around the world are taking steps to help their citizens gain the skills they’ll need to thrive in an AI-dominated job market.

The study examined 50 countries’ national AI strategies, focusing on policies for education and the workforce. The researchers used six indicators to evaluate each country’s prioritization on AI workforce training and education, classifying them as giving high, medium or low priority.

Only 13 countries gave high prioritization to training the current workforce and improving AI education in schools. Eleven of those were European countries, with Mexico and Australia being the two exceptions. The United States was one of 23 countries that considered workforce training and AI education a medium priority, with a less detailed plan compared to countries that saw them as a high priority.

Some common themes emerged between countries, such as establishing or improving AI-focused programs in universities, on-the-job training, and improving AI education for K-12 students. However, few focused on vulnerable populations such as the elderly or unemployed through programs to teach them basic AI skills.

Researchers also noted that cultivating interest in AI could help students prepare for careers, with countries like Germany emphasizing creating a culture that encourages interest in AI and Spain starting to teach kids AI-related skills as early as preschool.

Developing human soft skills, such as creativity, collaboration, and communication, was highlighted as crucial to ensuring students and employees continue to have a place in the workforce. This study was published in Human Resource Development Review.

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