Tile-Level Annotation of Satellite Images Using Multi-Level Max-Margin Discriminative Random Field
Abstract
:1. Introduction
2. Multi-Level Max-Margin Discriminative Topic Model Based on MedLDA
2.1. MedLDA Model
- (1)
- Draw topic proportions θ|α ∼ Dir(α);
- (2)
- For each of the N words wn:
- (a)
- Draw a topic assignment zn|θ ∼ Multinomial(θ);
- (b)
- Draw a word wn from P(wn|zn,β), a multinomial probability conditioned on the topic zn, namely wn|zn,β1:K ∼ Multinomial(βzn).
- (3)
- Draw a response variable y|z1:N,η,σ2 ∼ N(ηT Z̄,σ2), where
2.2. Multi-Level Max-Margin Discriminative Topic Model
3. M3DA-Based Random Field
3.1. Conditional Random Field
3.2. M3DA-Based Random Field
4. Tile-Level Annotation Algorithm and Experimental Result Analysis
4.1. M3DA-RF Based Tile-level Annotation Algorithm of Satellite Images
Input: original high-resolution image IO |
Output: the annotation image IA |
|
4.2. Experimental Data and Settings
4.3. Annotation Results and Analysis
5. Discussion
6. Conclusion
Acknowledgments
- Conflict of InterestThe authors declare no conflict of interest.
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Topics | 10 | 20 | 30 | 35 | 40 | 50 | 60 | 75 | 100 |
---|---|---|---|---|---|---|---|---|---|
Method | |||||||||
PLSA | 68.06% | 69.44% | 71.38% | 72.25% | 73.5% | 73.13% | 73.69% | 73.94% | 74.44% |
LDA | 69.38% | 73.13% | 74.56% | 76.13% | 74.94% | 75.94% | 76.38% | 77.94% | 78.5% |
MedLDA | 71.4% | 73.6% | 76.4% | 77.6% | 79% | 79.4% | 80.1% | 83.18% | 83.93% |
PLSA+CRF | 72% | 73% | 75.75% | 76.88% | 76.94% | 77.44% | 78.125% | 78.81% | 78.81% |
LDA+CRF | 71.88% | 78.18% | 79.13% | 80.06% | 80.5% | 81% | 80.81% | 82.31% | 83.5% |
MedLDA+CRF | 76.69% | 77.44% | 80.31% | 81% | 80.5% | 83% | 81.69% | 84.75% | 86.44% |
M3DA-RF | 91.88% | 91.38% | 91.31% | 91.38% | 91.19% | 91.63% | 91.5% | 91.75% | 91.63% |
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Share and Cite
Hu, F.; Yang, W.; Chen, J.; Sun, H. Tile-Level Annotation of Satellite Images Using Multi-Level Max-Margin Discriminative Random Field. Remote Sens. 2013, 5, 2275-2291. https://doi.org/10.3390/rs5052275
Hu F, Yang W, Chen J, Sun H. Tile-Level Annotation of Satellite Images Using Multi-Level Max-Margin Discriminative Random Field. Remote Sensing. 2013; 5(5):2275-2291. https://doi.org/10.3390/rs5052275
Chicago/Turabian StyleHu, Fan, Wen Yang, Jiayu Chen, and Hong Sun. 2013. "Tile-Level Annotation of Satellite Images Using Multi-Level Max-Margin Discriminative Random Field" Remote Sensing 5, no. 5: 2275-2291. https://doi.org/10.3390/rs5052275