摘要
In this paper, an ICA-based approach is proposed for hyperspectral image analysis. It can be viewed as a random version of the commonly used linear spectral mixture analysis, in which the abundance fractions in a linear mixture model are considered to be unknown independent signal sources. It does not require the full rank of the separating matrix or orthogonality as most ICA methods do. More importantly, the learning algorithm is designed based on the independency of the material abundance vector rather than the independency of the separating matrix generally used to constrain the standard ICA. As a result, the deigned learning algorithm is able to converge to non-orthogonal independent components. This is particularly useful in hyperspectral image analysis since many materials extracted from a hyperspectral image may have similar spectral signatures and may not be orthogonal. The AVIRIS experiments have demonstrated that the proposed ICA provides an effective unsupervised technique for hyperspectral image classification.
原文 | English |
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頁面 | 3136-3138 |
頁數 | 3 |
出版狀態 | Published - 2000 |
事件 | 2000 International Geoscience and Remote Sensing Symposium (IGARSS 2000) - Honolulu, HI, USA 持續時間: 2000 7月 24 → 2000 7月 28 |
Conference
Conference | 2000 International Geoscience and Remote Sensing Symposium (IGARSS 2000) |
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城市 | Honolulu, HI, USA |
期間 | 00-07-24 → 00-07-28 |
All Science Journal Classification (ASJC) codes
- 電腦科學應用
- 一般地球與行星科學