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Taiwan Academic Institutional Repository >
Browse by Author
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"fahn c s"
Showing items 11-20 of 50 (5 Page(s) Totally) << < 1 2 3 4 5 > >> View [10|25|50] records per page
| 國立臺灣科技大學 |
2019 |
An Aesthetic Preference Prediction System for Assessing Natural Images Based on Photo Complexity and Composition Evaluation
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Fahn, C.-S.;Pan, J.-Y.;Wu, M.-L. |
| 淡江大學 |
2018-10-28 |
An Aesthetic Preference Prediction System for Assessing Natural Images Based on Photo Complexity and Composition Evaluation
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Fahn, C. S.;Pan, C. Y.;Wu, M. L. |
| 淡江大學 |
2017-10-25 |
On the Design of a Photo Beauty Measurement Mechanism Based on Image Composition and Machine Learning
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Fahn, C. S.;Wu, M. L. |
| 淡江大學 |
2017-07-09 |
A Real-time Professional Photographing Guiding System through Image Composition Analysis
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Wu, M. L.;Fahn, C. S. |
| 淡江大學 |
2017-03-13 |
Image-format-independent Tampered Image Detection Based on Overlapping Concurrent Directional Patterns and Neural Networks
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Wu, M. L.;Fahn, C. S.;Chen, Y. F. |
| 淡江大學 |
2017-01-06 |
A Surveillance Video Condensation System Based on the Spatial and Temporal Rearrangement of Moving Object Trajectories
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Fahn, C. S.;Wu, M. L.;Liu, C. C. |
| 國立臺灣科技大學 |
2017 |
Image-format-independent tampered image detection based on overlapping concurrent directional patterns and neural networks
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Wu, M.-L;Fahn, C.-S;Chen, Y.-F. |
| 國立臺灣科技大學 |
2017 |
A novel prediction method based on Grey-LVQ neural network
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Yeh, P.-L;Fahn, C.-S;Lin, Y.-T;Hung, Hung H.-F;Hsu, Y.-L;Hsu, Y.-T. |
| 國立臺灣科技大學 |
2017 |
A real-Time pedestrian legs detection and tracking system used for autonomous mobile robots
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Fahn, C.-S.;Lee, C.-P.;Yeh, Yeh Y.-S. |
| 國立臺灣科技大學 |
2017 |
Development of a novel two-hand playing piano robot
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Fahn, C.-S.;Tsai, C.-F.;Lin, Y.-W. |
Showing items 11-20 of 50 (5 Page(s) Totally) << < 1 2 3 4 5 > >> View [10|25|50] records per page
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