Automatic diabetic retinopathy (DR) lesions segmentation makes great sense of assisting ophthalmologists in diagnosis. Although many researches have been conducted on this task, most prior works paid too much attention to the designs of networks instead of considering the pathological association for lesions. Through investigating the pathogenic causes of DR lesions in advance, we found that certain lesions are closed to specific vessels and present relative patterns to each other. Motivated by the observation, we propose a relation transformer block (RTB) to incorporate attention mechanisms at two main levels: a self-attention transformer exploits global dependencies among lesion features, while a cross-attention transformer allows interactions between lesion and vessel features by integrating valuable vascular information to alleviate ambiguity in lesion detection caused by complex fundus structures. In addition, to capture the small lesion patterns first, we propose a global transformer block (GTB) which preserves detailed information in deep network. By integrating the above blocks of dual-branches, our network segments the four kinds of lesions simultaneously. Comprehensive experiments on IDRiD and DDR datasets well demonstrate the superiority of our approach, which achieves competitive performance compared to state-of-the-arts.
翻译:虽然已经就这项任务进行了许多研究,但大多数先前的工作都过于关注网络的设计,而不是病理病理病理协会;通过事先调查DR损伤的致病原因,我们发现某些损伤对特定船只是封闭的,并呈现相对模式;根据观察,我们提议建立一个关系变压块(RTB),在两个主要层面纳入关注机制:一个自留式变压器利用了不同病理特征之间的全球依赖性,而一个交叉注意变压器则通过整合宝贵的血管信息,减轻复杂基金结构造成的损害检测中的模糊性,从而允许损害和船只特征之间的互动;此外,为了首先捕捉小损害模式,我们提议建立一个全球变压器块,在深海网络中保存详细信息;通过整合上述两层两层,我们的网络分为四类损害;对IDRiD和DMDR数据方法进行综合实验,以比较我们具有竞争力的状态,从而显示我们的数据的优越性能。