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{Sing Bing Kang Feng Zhou Michael F. Cohen}

Abstract
We describe a new approach for generating regular-speed, low-frame-rate (LFR) video from a high-frame-rate (HFR) input while preserving the important moments in the original. We call this time-mapping, a time-based analogy to high dynamic range to low dynamic range spatial tone-mapping. Our approach makes these contributions: (1) a robust space-time saliency method for evaluating visual importance, (2) a re-timing technique to temporally resample based on frame importance, and (3) temporal filters to enhance the rendering of salient motion. Results of our space-time saliency method on a benchmark dataset show it is state-of-the-art. In addition, the benefits of our approach to HFR-to-LFR time-mapping over more direct methods are demonstrated in a user study.
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| video-salient-object-detection-on-davis-2016 | TIMP | AVERAGE MAE: 0.185 MAX E-MEASURE: 0.680 S-Measure: 0.574 |
| video-salient-object-detection-on-davsod | TIMP | Average MAE: 0.206 S-Measure: 0.534 max E-Measure: 0.582 |
| video-salient-object-detection-on-davsod-1 | TIMP | Average MAE: 0.245 S-Measure: 0.503 max E-measure: 0.616 |
| video-salient-object-detection-on-davsod-2 | TIMP | Average MAE: 0.190 S-Measure: 0.530 max E-measure: 0.665 |
| video-salient-object-detection-on-fbms-59 | TIMP | AVERAGE MAE: 0.192 MAX F-MEASURE: 0.465 S-Measure: 0.576 |
| video-salient-object-detection-on-uvsd | TIMP | Average MAE: 0.171 S-Measure: 0.541 max E-measure: 0.662 |
| video-salient-object-detection-on-visal | TIMP | Average MAE: 0.170 S-Measure: 0.612 max E-measure: 0.743 |
| video-salient-object-detection-on-vos-t | TIMP | Average MAE: 0.192 S-Measure: 0.546 max E-measure: 0.640 |
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