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{Pierre-Marc Jodoin Justin Eichel Shaozi Li Andrew Achkar Zhiming Luo Akshaya Mishra}

Abstract
Saliency detection aims to highlight the most relevant objects in an image. Methods using conventional models struggle whenever salient objects are pictured on top of a cluttered background while deep neural nets suffer from excess complexity and slow evaluation speeds. In this paper, we propose a simplified convolutional neural network which combines local and global information through a multi-resolution 4x5 grid structure. Instead of enforcing spacial coherence with a CRF or superpixels as is usually the case, we implemented a loss function inspired by the Mumford-Shah functional which penalizes errors on the boundary. We trained our model on the MSRA-B dataset, and tested it on six different saliency benchmark datasets. Results show that our method is on par with the state-of-the-art while reducing computation time by a factor of 18 to 100 times, enabling near real-time, high performance saliency detection.
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| salient-object-detection-on-duts-te | NLDF | MAE: 0.065 max F-measure: 0.816 |
| salient-object-detection-on-istd | NLDF | Balanced Error Rate: 7.50 |
| salient-object-detection-on-sbu | NLDF | Balanced Error Rate: 7.02 |
| salient-object-detection-on-soc | NLDF | Average MAE: 0.106 S-Measure: 0.816 mean E-Measure: 0.837 |
| salient-object-detection-on-ucf | NLDF | Balanced Error Rate: 7.69 |
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