Accurate polyp segmentation is of great importance for colorectal cancer diagnosis and treatment. However, due to the high cost of producing accurate mask annotations, existing polyp segmentation methods suffer from severe data shortage and impaired model generalization. Reversely, coarse polyp bounding box annotations are more accessible. Thus, in this paper, we propose a boosted BoxPolyp model to make full use of both accurate mask and extra coarse box annotations. In practice, box annotations are applied to alleviate the over-fitting issue of previous polyp segmentation models, which generate fine-grained polyp area through the iterative boosted segmentation model. To achieve this goal, a fusion filter sampling (FFS) module is firstly proposed to generate pixel-wise pseudo labels from box annotations with less noise, leading to significant performance improvements. Besides, considering the appearance consistency of the same polyp, an image consistency (IC) loss is designed. Such IC loss explicitly narrows the distance between features extracted by two different networks, which improves the robustness of the model. Note that our BoxPolyp is a plug-and-play model, which can be merged into any appealing backbone. Quantitative and qualitative experimental results on five challenging benchmarks confirm that our proposed model outperforms previous state-of-the-art methods by a large margin.
翻译:精密的聚积分解对于直肠癌诊断和治疗非常重要。然而,由于制作准确的掩码说明的成本高昂,现有的聚分解方法存在严重的数据短缺和模型概括化缺陷。反之,粗化的聚积捆绑框说明更容易获得。因此,在本文件中,我们建议采用一个推动式的箱式包件分析模型,以充分利用准确的掩码和超粗箱说明。在实践中,应用框注解以缓解先前的聚分解模型之间的过合问题,这些模型通过迭代加速分解模型产生细微微的聚分解区域。为了实现这一目标,首先建议采用聚集过滤器取样模块,以便从箱注解中生成精密的伪标签,但噪音较少,从而导致显著的性改进。此外,考虑到同一聚谱的外观一致性,还设计了一个图像一致性(IC)损失。这种IC损失明确缩小了两个不同网络所提取的特征之间的距离,从而改进了模型的坚固性。请注意,我们的Boxpolyplyply 样样取样模块是前五级基质模型的顶点和最有挑战性的标准,可以通过任何可靠的基质模型加以合并。