This paper assesses a new classification approach that examines low-resolution images first, only moving to higher resolution images if the classification from the initial pass does not have a high degree of confidence. This multi-stage strategy for classification can be used with any classifier and does not require additional training. The approach is tested on five common datasets using four different classification approaches. It is found to be effective for cases in which at least some fraction of cases can be correctly classified using coarser data than are typically used. neural networks performing digit recognition, for instance, the proposed approach reduces the resource cost of classifying test cases by 60% to 85% with less than 5% reduction in accuracy.
翻译:本文评估了一种新的分类方法,先研究低分辨率图像,只有在最初通过的分类没有高度信心的情况下,才转向高分辨率图像。这种多阶段分类战略可以与任何分类者一起使用,不需要额外培训。该方法使用四种不同的分类方法在五套共同数据集中测试。在使用粗糙数据比通常使用的数据至少部分案例可以正确分类的情况下,该方法被认为有效。例如,采用数字识别的神经网络,拟议方法将测试病例分类的资源成本降低60%至85%,精确度降低不到5%。