Multiple instance learning is qualified for many pattern recognition tasks with weakly annotated data. The combination of artificial neural network and multiple instance learning offers an end-to-end solution and has been widely utilized. However, challenges remain in two-folds. Firstly, current MIL pooling operators are usually pre-defined and lack flexibility to mine key instances. Secondly, in current solutions, the bag-level representation can be inaccurate or inaccessible. To this end, we propose an attention awareness multiple instance neural network framework in this paper. It consists of an instance-level classifier, a trainable MIL pooling operator based on spatial attention and a bag-level classification layer. Exhaustive experiments on a series of pattern recognition tasks demonstrate that our framework outperforms many state-of-the-art MIL methods and validates the effectiveness of our proposed attention MIL pooling operators.
翻译:人工神经网络和多实例学习相结合,提供了终端到终端的解决办法,并得到广泛利用。然而,挑战依然存在于两个方面:第一,目前的MIL集合操作员通常是预先界定的,对地雷关键案例缺乏灵活性。第二,在目前的解决方案中,袋级代表可能不准确或无法获取。为此,我们建议本文件建立一个关注意识多实例神经网络框架。它包括一个实例级分类器,一个基于空间关注的可培训的MIL集合操作员和一个包级分类层。关于一系列模式识别任务的详尽实验表明,我们的框架比许多最先进的MIL方法要好,并验证了我们拟议的关注MIL集合操作员的有效性。