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Noise Reduction of Multi-Spectral Scanner Image Data Using Scan Overlap
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- HANAIZUMI Hiroshi
- Faculty of Engineering, University of Tokyo
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- INAMURA Minoru
- Faculty of Engineering, University of Tokyo
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- TOYOTA Hiromichi
- Faculty of Engineering, University of Tokyo
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- FUJIMURA Sadao
- Faculty of Engineering, University of Tokyo
Bibliographic Information
- Other Title
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- スキャンオーバラップを利用したMSS画像データの雑音除去
- スキャンオーバラップ オ リヨウシタ MSS ガゾウ データ ノ ザツオン ジ
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Description
A new noise reduction method, which is named APR (Adaptive Peak Rejection) for MSS (Multi-Spectral Scanner) image data is developed. Although many of the signal components of image data are lost if they are processed by a spatial low pass filter or by a running mean method, the APR method loses very few signal components of the image data. For, the APR method uses the scan overlap positively, which has not been used in the usual methods.<br>And APR not only reduces as much random Gaussian noise as can be reduced by a running mean method using scan overlap but also rejects spiky noise almost perfectly. Moreover, APR does nothing on the image data which include no such noise, and has a simple algorithm. Thus it is concluded that APR method is most suitable to pre-process the MSS image data.<br>In this paper, the scan overlap and APR method are discussed. And the superiority of APR method to the running mean method using scan overlap is proved by means of actual MSS image data processing.
Journal
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- Transactions of the Society of Instrument and Control Engineers
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Transactions of the Society of Instrument and Control Engineers 16 (6), 880-885, 1980
The Society of Instrument and Control Engineers
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Details 詳細情報について
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- CRID
- 1390282679480716160
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- NII Article ID
- 130003968820
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- NII Book ID
- AN00072392
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- ISSN
- 18838189
- 04534654
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- NDL BIB ID
- 2295307
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- Data Source
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- JaLC
- NDL Search
- Crossref
- CiNii Articles
- OpenAIRE
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- Abstract License Flag
- Disallowed