A New Framework of Removing Salt and Pepper Impulse Noise for the Noisy Image Including Many Noise-Free White and Black Pixels
スポンサーリンク
概要
- 論文の詳細を見る
In this paper, we propose a new framework of removing salt and pepper impulse noise. In our proposed framework, the most important point is that the number of noise-free white and black pixels in a noisy image can be determined by using the noise rates estimated by Fuzzy Impulse Noise Detection and Reduction Method (FINDRM) and Efficient Detail-Preserving Approach (EDPA). For the noisy image includes many noise-free white and black pixels, the detected noisy pixel from the FINDRM is re-checked by using the alpha-trimmed mean. Finally, the impulse noise filtering phase of the FINDRM is used to restore the image. Simulation results show that for the noisy image including many noise-free white and black pixels, the proposed framework can decrease the False Hit Rate (FHR) efficiently compared with the FINDRM. Therefore, the proposed framework can be used more widely than the FINDRM.
- 社団法人 電気学会の論文
- 2009-07-01
著者
-
Kuroiwa Shingo
Chiba University
-
Kuroiwa Shingo
Chiba Univ. And National Inst. Of Information And Communications Technol.
-
Li Song
Chiba University
-
WANG Caizhu
Chiba University
-
LI Yeqiu
Chiba University
-
WANG Ling
Chiba University
-
SAKATA Shiro
Chiba University
-
SEKIYA Hiroo
Chiba University
関連論文
- CENSREC-1-C : An evaluation framework for voice activity detection under noisy environments
- A New Framework of Removing Salt and Pepper Impulse Noise for the Noisy Image Including Many Noise-Free White and Black Pixels
- Removing Poisson noise from image in wavelet domain
- Denoising images with poisson noise using M-transformation in wavelet domain (Special section on papers awarded the student paper award at NCSP'07)
- Noise Reduction in Medical X-ray Image Using Wavelet Based on Image Characteristics
- CENSREC-4: An evaluation framework for distant-talking speech recognition in reverberant environments