亞洲知識產權資訊網為知識產權業界提供一個一站式網上交易平台,協助業界發掘知識產權貿易商機,並與環球知識產權業界建立聯繫。無論你是知識產權擁有者正在出售您的知識產權,或是製造商需要購買技術以提高操作效能,又或是知識產權配套服務供應商,你將會從本網站發掘到有用的知識產權貿易資訊。

REPET (REpeating Pattern Extraction Technique)

技術優勢
Entirely automated – no userinput neededNo system “training” neededSimple processing – nocomplex frameworks needed
詳細技術說明
REPET uses a simple but reliable technique for music/voice separation.
*Abstract

Currently availablemusic separation methods are more demanding and complex, demanding system“training,” user designation of special audio features, and extensive processingtime to support their complex frameworks. REPET demands none of this, and is simple, fast and completelyautomatable.  Evaluationof 1,000 song clips showed that REPET achieves better separation performance than existing automaticapproaches, and in much simpler fashion.  

REPET exploitscore principle in music– repetition. This especially applies to popular songs. REPET separates music from voice, simply by extracting the repeating musical structure.  It first findsthe period of the repeating structure. Then, the spectrogram is segmentedat period boundaries and the segments are averagedto create a repeating segment model. Finally, each time-frequency bin in a segment is compared to the model, and the mixture is partitionedusing binary time-frequency masking by labeling bins similar to themodel as the repeatingbackground. Because REPET utilizes“self-similarity” between repeating segments, it works on a variety of audiosignals having one or more repeating patterns within a recording. 

國家/地區
美國

欲了解更多信息,請點擊 這裡
移動設備