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How to turn off automatic ear detection for Airpods on Android? 

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Proceedings ArticleDOI
Wen-Jing Li, Zhi-Chun Mu 
31 Oct 2008
37 Citations
The third contribution is we designed an ear detection system of DSP and gained a good result of practical application.
Open accessProceedings ArticleDOI
04 Feb 2009
44 Citations
This paper proposes an efficient skin-color and template based technique for automatic ear detection in a side face image.
Open accessJournal ArticleDOI
Li Yuan, Zhichun Mu 
21 Citations
We propose an ear recognition system based on 2D ear images which includes three stages: ear enrollment, feature extraction, and ear recognition.
Proceedings ArticleDOI
07 Jan 2008
85 Citations
But accurate and rapid detection of the ear for real-time applications is a challenging task, particularly in the presence of occlusions.
Further analysis on our data set yielded that: (a) photometric normalization techniques do not directly improve ear detection performance.
Proceedings ArticleDOI
Ajay Kumar, Ajay Kumar, David Zhang 
09 Apr 2007
32 Citations
Our experiments on two different public ear databases achieve promising results and suggest its utility in ear-based authentication.
Recent research in texture-based ear recognition also indicates that ear detection and texture-based ear recognition are robust against signal degradation and encoding artefacts.
In this paper, an efficient and fully automatic 3D ear recognition system is proposed to address these issues.
Proceedings ArticleDOI
Li Yuan, Feng Zhang 
12 Jul 2009
31 Citations
The ear detection experiments on USTB ear database, CAS-PEAL face database and CMU PIE database show that the proposed method is significantly efficient and robust.

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