Deep learning solutions of the salient object detection problem have achieved great results in recent years. The majority of these models are based on encoders and decoders, with a different multi-feature combination. In this paper, we show that feature concatenation works better than other combination methods like multiplication or addition. Also, joint feature learning gives better results, because of the information sharing during their processing. We designed a Complementary Extraction Module (CEM) to extract necessary features with edge preservation. Our proposed Excessiveness Loss (EL) function helps to reduce false-positive predictions and purifies the edges with other weighted loss functions. Our designed Pyramid-Semantic Module (PSM) with Global guiding flow (G) makes the prediction more accurate by providing high-level complementary information to shallower layers. Experimental results show that the proposed model outperforms the state-of-the-art methods on all benchmark datasets under three evaluation metrics.
翻译:近年来,显著天体探测问题的深层学习解决方案取得了巨大成果。 这些模型大多以编码器和解码器为基础,具有不同的多功能组合。 在本文中,我们显示,特征组合比其他组合方法(如乘法或加法)效果更好。 另外,由于在处理过程中共享信息,共同特征学习产生更好的结果。我们设计了一个补充提取模块(CEM),以提取边缘保护的必要特征。我们拟议的超常损失功能有助于减少假阳性预测,用其他加权损失功能净化边缘。我们设计的具有全球指导流程(G)的金字塔-曼格模块(PSM)通过向浅层提供高层次的补充信息使预测更加准确。实验结果表明,拟议的模型在三种评价指标下超越了所有基准数据集的最新方法。