Spatial context-aware network for salient object detection

Y Kong, M Feng, X Li, H Lu, X Liu, B Yin - Pattern Recognition, 2021 - Elsevier
Pattern Recognition, 2021Elsevier
Abstract Salient Object Detection (SOD) is a fundamental problem in the field of computer
vision. This paper presents a novel Spatial Context-Aware Network (SCA-Net) for SOD in
images. Compared with other recent deep learning based SOD algorithms, SCA-Net can
more effectively aggregate multi-level deep features. A Long-Path Context Module (LPCM)
is employed to grant better discrimination ability to feature maps that incorporate coarse
global information. Consequently, a more accurate initial saliency map can be obtained to …
Abstract
Salient Object Detection (SOD) is a fundamental problem in the field of computer vision. This paper presents a novel Spatial Context-Aware Network (SCA-Net) for SOD in images. Compared with other recent deep learning based SOD algorithms, SCA-Net can more effectively aggregate multi-level deep features. A Long-Path Context Module (LPCM) is employed to grant better discrimination ability to feature maps that incorporate coarse global information. Consequently, a more accurate initial saliency map can be obtained to facilitate subsequent predictions. SCA-Net also adopts a Short-Path Context Module (SPCM) to progressively enforce the interaction between local contextual cues and global features. Extensive experiments on five large-scale benchmarks demonstrate that SCA-Net achieves favorable performance against very recent state-of-the-art algorithms.
Elsevier