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Lakshmi et al., 2024 - Google Patents

YOLOv8 and Deep CNN

Lakshmi et al., 2024

Document ID
8864026780870162959
Author
Lakshmi A
Kishore G
Kumar T
Koushik V
Publication year
Publication venue
Innovations and Advances in Cognitive Systems: ICIACS 2024, Volume 1

External Links

Snippet

The proposed DDT-CNN model represents a deep learning architecture-based comprehensive system for drone detection and classification. YOLOv8 a cutting-edge object detection model, is used in the detection phase to precisely find drones in aerial footage …
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