Skip to content
GCC AI Research

An AI trained to spot hidden objects can see through camouflage - New Scientist

Inception · · Notable

Summary

Researchers at the University of Maryland have developed an AI model that can identify objects hidden by camouflage by analyzing subtle texture variations. The AI was trained on synthetic data and then tested on real-world images. It successfully detected camouflaged objects with high accuracy, even when the camouflage was very effective. Why it matters: This could have implications for military applications, search and rescue operations, and even wildlife conservation.

Get the weekly digest

Top AI stories from the GCC region, every week.

Related

An AI trained to spot hidden objects can see through camouflage - New Scientist

Inception ·

Researchers at the University of Maryland have developed an AI system that can identify objects hidden by camouflage. The AI uses a convolutional neural network trained on synthetic data to detect partially occluded objects. The system outperformed existing object detection methods in tests on real-world images. Why it matters: The work demonstrates potential applications of AI in defense, security, and search and rescue operations in the Middle East and elsewhere.

Teaching algorithms to see

KAUST ·

KAUST's Image and Video Understanding Lab is developing machine learning algorithms for computer vision and object tracking, with applications in video content search and UAV navigation. Their algorithms can detect specific activities in videos, helping platforms detect unwanted content and deliver relevant ads. The object tracking algorithm is also used to empower UAVs, enabling them to follow objects autonomously. Why it matters: This research enhances video content analysis and UAV capabilities, positioning KAUST as a leader in computer vision and AI applications within the region.

Teaching machines what they don’t know: a new approach to open-world object detection

MBZUAI ·

MBZUAI researchers are presenting a new approach to open-world object detection at the AAAI conference. The method enables machines to distinguish between known and unknown objects in images, and then learn to classify the unknown objects. PhD student Sahal Shaji Mullappilly is the lead author of the study, titled "Semi-Supervised Open-World Detection". Why it matters: This research addresses a key limitation in current object detection systems, allowing for more adaptable and robust AI in real-world applications.