{E. Niebur C. Koch L. Itti}
Abstract
A visual attention system, inspired by the behavior and the neuronal architecture of the early primate visual system, is presented. Multiscale image features are combined into a single topographical saliency map. A dynamical neural network then selects attended locations in order of decreasing saliency. The system breaks down the complex problem of scene understanding by rapidly selecting, in a computationally efficient manner, conspicuous locations to be analyzed in detail.
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| video-saliency-detection-on-msu-video | ITTI | AUC-J: 0.811 CC: 0.572 FPS: 2.23 KLDiv: 0.799 NSS: 1.34 SIM: 0.544 |
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