그림 1. 제안하는 방법의 블록도 Fig. 1. Block diagram for the proposed method
그림 2. SNR 테스트를 위한 블록도 Fig. 2. Block diagram for SNR test
표 1. 기존 대표 방법과 실시간 NMF간 성능 평가 결과 Table 1. Performance evaluation results between the proposed method and conventional NMF
표 2. 후처리 연동 방법과 기존 NMF간 성능 평가 결과 Table 2. Performance evaluation results between the proposed method and conventional NMF
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