With the goal of identifying pixel-wise salient object regions from each input image, salient object detection (SOD) has been receiving great attention in recent years. One kind of mainstream SOD methods is formed by a bottom-up feature encoding procedure and a top-down information decoding procedure. While numerous approaches have explored the bottom-up feature extraction for this task, the design on top-down flows still remains under-studied. To this end, this paper revisits the role of top-down modeling in salient object detection and designs a novel densely nested top-down flows (DNTDF)-based framework. In every stage of DNTDF, features from higher levels are read in via the progressive compression shortcut paths (PCSP). The notable characteristics of our proposed method are as follows. 1) The propagation of high-level features which usually have relatively strong semantic information is enhanced in the decoding procedure; 2) With the help of PCSP, the gradient vanishing issues caused by non-linear operations in top-down information flows can be alleviated; 3) Thanks to the full exploration of high-level features, the decoding process of our method is relatively memory efficient compared against those of existing methods. Integrating DNTDF with EfficientNet, we construct a highly light-weighted SOD model, with very low computational complexity. To demonstrate the effectiveness of the proposed model, comprehensive experiments are conducted on six widely-used benchmark datasets. The comparisons to the most state-of-the-art methods as well as the carefully-designed baseline models verify our insights on the top-down flow modeling for SOD. The code of this paper is available at https://github.com/new-stone-object/DNTD.
翻译:由于从每个输入图像中找出像素突出对象区域的目标,显著对象探测(SOD)近年来一直受到极大关注。一种主流的 SOD 方法是由自下而上地的编码程序和自上而下的信息解码程序形成的一种主流 SOD 方法。虽然许多方法探索了这一任务自下而上地的提取特征,但自上而下流动的设计仍然未得到充分研究。为此,本文件回顾了自上而下建模型在显性对象探测中所起的作用,并设计了一个新的自下而上而下密集的基线流(DNTDF)框架。在DNTDFD的每一个阶段,从更高层次的特征都通过渐进压缩快捷路径(PCSP)阅读。我们拟议方法的显著特点如下:1 在解码程序中,传播通常具有相对强的语义信息的高级特征,在解析程序中,2)在PCSP的帮助下,由于在自上至下而下而下方信息流的非线性化数据流(DDF)的模型消化问题可以缓解;3 由于对六种高层次的流进行全面探索,我们现有的高层次的流数据流,我们现有的SDODF 的快速化方法的解析的解析化过程正在以相对地进行。我们现有的快速化的快速化的SDODF 正在演示的系统化。