Binary segmentation is used to distinguish objects of interest from background, and is an active area of convolutional encoder-decoder network research. The current decoders are designed for specific objects based on the common backbones as the encoders, but cannot deal with complex backgrounds. Inspired by the way human eyes detect objects of interest, a new unified dual-branch decoder paradigm named the difference-aware decoder is proposed in this paper to explore the difference between the foreground and the background and separate the objects of interest in optical images. The difference-aware decoder imitates the human eye in three stages using the multi-level features output by the encoder. In Stage A, the first branch decoder of the difference-aware decoder is used to obtain a guide map. The highest-level features are enhanced with a novel field expansion module and a dual residual attention module, and are combined with the lowest-level features to obtain the guide map. In Stage B, the other branch decoder adopts a middle feature fusion module to make trade-offs between textural details and semantic information and generate background-aware features. In Stage C, the proposed difference-aware extractor, consisting of a difference guidance model and a difference enhancement module, fuses the guide map from Stage A and the background-aware features from Stage B, to enlarge the differences between the foreground and the background and output a final detection result. The results demonstrate that the difference-aware decoder can achieve a higher accuracy than the other state-of-the-art binary segmentation methods for these tasks.
翻译:二元分解用于区分感兴趣的对象和背景,并且是光学图像中关注对象的一个活跃领域。目前的解码器是针对基于共同主干柱的单个对象设计的,以编码器为编码器,但无法处理复杂的背景。受人类眼睛探测感兴趣的对象的方式的启发,本文件提出了名为差异认知解码器的新统一的双分管解码器模式,以探索前台和背景之间的差异,并区分光学图像中感兴趣的对象。不同的觉分解器使用编码器的多级特征输出,在三个阶段模仿人类眼睛。在A阶段,不同觉分解码器的第一个分支解码器用于获取指南地图。最高层次特征通过一个全新的外地扩展模块和双残余关注模块得到加强,并与最低级别特征相结合以获取指南图。在B阶段,另一个分解码分解器采用一个中间特性模块模块模块模块,在文本细节和多级特征中进行交易,从变异的变变的变的变图和变变图的变的变图层结构图中,从变变的变图和变色模型的变的变图变的变图变图解,可以实现背景变的变图变图变的变图变图。