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"path": "/news/2026-05-yolo-framework-boosts-degree-small.html",
"publishedAt": "2026-05-22T14:00:04.000Z",
"site": "https://techxplore.com",
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"textContent": "Omnidirectional cameras are widely popular as they capture a full 360-degree view. They are often utilized for surveillance, traffic analysis, and autonomous systems. But the same wide-angle vision also leads to a technical problem. Objects far from the camera often appear distorted and tiny, making it difficult for computer vision systems to accurately recognize them.",
"title": "Enhanced YOLO framework boosts 360-degree small-object detection to 90% accuracy"
}