GreenSaliency: A Lightweight and Efficient Image Saliency Detection Method
Image saliency detection is crucial in understanding human gaze patterns from visual stimuli. The escalating demand for research in image saliency detection is driven by the growing necessity to incorporate such techniques into various computer vision tasks and to understand human visual systems. Ma...
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Veröffentlicht in: | APSIPA transactions on signal and information processing 2024-01, Vol.13 (1) |
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Sprache: | eng |
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Zusammenfassung: | Image saliency detection is crucial in understanding human gaze
patterns from visual stimuli. The escalating demand for research
in image saliency detection is driven by the growing necessity to
incorporate such techniques into various computer vision tasks and
to understand human visual systems. Many existing image saliency
detection methods rely on deep neural networks (DNNs) to achieve
good performance. However, the high computational complexity associated
with these approaches impedes their integration with other
modules or deployment on resource-constrained platforms, such as
mobile devices. To address this, we propose a novel image saliency
detection method named GreenSaliency, which has a small model
size, minimal carbon footprint, and low computational complexity.
GreenSaliency can be a competitive alternative to the existing
deep-learning-based (DL-based) image saliency detection methods
with limited computation resources. GreenSaliency comprises two
primary steps: 1) multi-layer hybrid feature extraction and 2) multipath
saliency prediction. Experimental results demonstrate that
GreenSaliency achieves comparable performance to the state-ofthe-
art DL-based methods while possessing a considerably smaller
model size and significantly reduced computational complexity. |
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ISSN: | 2048-7703 2048-7703 |
DOI: | 10.1561/116.20240023 |