Convolutional Neural Networks (CNNs) are supposed to be fed with only high-quality annotated datasets. Nonetheless, in many real-world scenarios, such high quality is very hard to obtain, and datasets may be affected by any sort of image degradation and mislabelling issues. This negatively impacts the performance of standard CNNs, both during the training and the inference phase. To address this issue we propose Wise2WipedNet (W2WNet), a new two-module Convolutional Neural Network, where a Wise module exploits Bayesian inference to identify and discard spurious images during the training, and a Wiped module takes care of the final classification while broadcasting information on the prediction confidence at inference time. The goodness of our solution is demonstrated on a number of public benchmarks addressing different image classification tasks, as well as on a real-world case study on histological image analysis. Overall, our experiments demonstrate that W2WNet is able to identify image degradation and mislabelling issues both at training and at inference time, with a positive impact on the final classification accuracy.
翻译:然而,在许多现实世界的情景中,如此高质量的质量很难获得,而且数据集可能受到任何图像退化和标签错误问题的影响。这在培训和推论阶段都对标准CNN的性能产生了负面影响。为了解决这一问题,我们建议W2WWNet(W2WNet)这个新型的双模版神经网络,一个智能模块利用Bayesian的推论在培训期间识别和丢弃虚假图像,一个擦拭模块在播送关于预测可信度的信息时注意最终分类。我们解决方案的优点表现在涉及不同图像分类任务的若干公共基准上,以及一项关于直观图像分析的真实世界案例研究上。总体而言,我们的实验表明W2WNet能够在培训和推论期间发现图像退化和错贴问题,对最终分类准确性产生了积极影响。