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https://www.riss.kr/link?id=A109736901
2025
Korean
KCI등재,SCOPUS
학술저널
693-700(8쪽)
0
상세조회0
다운로드다국어 초록 (Multilingual Abstract)
Identifying camouflaged soldiers in warfare is crucial for reducing friendly casualties and gaining substantial tactical advantages. This paper proposes a novel approach for classifying and detecting camouflaged soldiers using synthetic datasets, ense...
Identifying camouflaged soldiers in warfare is crucial for reducing friendly casualties and gaining substantial tactical advantages. This paper proposes a novel approach for classifying and detecting camouflaged soldiers using synthetic datasets, ensemble models, and the complementary object recognition algorithm. To overcome the challenges of visually identifying camouflaged soldiers, we leverage advanced intelligent recognition technologies. To address the scarcity of datasets featuring camouflaged soldiers, we employ a diffusion-based synthetic data generation method. Specifically, we use DreamBooth to produce large-scale synthetic data from a limited number of real images, effectively expanding the dataset. We utilize this augmented dataset to train ensemble classification models, which combine the strengths of multiple classifiers to achieve improved performance. To further enhance reliability, the proposed algorithm integrates the classification models with object detection models, enabling them to interact and compensate for each other’'s false detections. This synergy significantly improves overall detection accuracy. Experimental results confirm that the proposed method outperforms approaches relying solely on classification or detection models, demonstrating its superior performance in identifying camouflaged soldiers.
End-to-end 적응형 크루즈 컨트롤을 위한 단안 카메라 기반상대 거리 및 속도 추정 모델 개발
강화학습을 사용한 도달 가능 집합 기반 자동 수직 주차 경로 계획
양바퀴-다리 역진자 로봇의 모델링 및 능동 밸런스 제어