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3 months ago

Local Background Enclosure for RGB-D Salient Object Detection

{Chris McCarthy ShaoDi You Nick Barnes David Feng}

Local Background Enclosure for RGB-D Salient Object Detection

Abstract

Recent work in salient object detection has considered the incorporation of depth cues from RGB-D images. In most cases, depth contrast is used as the main feature. However, areas of high contrast in background regions cause false positives for such methods, as the background frequently contains regions that are highly variable in depth. Here, we propose a novel RGB-D saliency feature. Local Background Enclosure (LBE) captures the spread of angular directions which are background with respect to the candidate region and the object that it is part of. We show that our feature improves over state-of-the-art RGB-D saliency approaches as well as RGB methods on the RGBD1000 and NJUDS2000 datasets.

Benchmarks

BenchmarkMethodologyMetrics
rgb-d-salient-object-detection-on-nju2kLBE
Average MAE: 0.153
S-Measure: 69.5
max E-Measure: 80.3
max F-Measure: 74.8

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Local Background Enclosure for RGB-D Salient Object Detection | Papers | HyperAI