Deep neural networks are becoming increasingly powerful and large and always require more labelled data to be trained. However, since annotating data is time-consuming, it is now necessary to develop systems that show good performance while learning on a limited amount of data. These data must be correctly chosen to obtain models that are still efficient. For this, the systems must be able to determine which data should be annotated to achieve the best results. In this paper, we propose four estimators to estimate the confidence of object detection predictions. The first two are based on Monte Carlo dropout, the third one on descriptive statistics and the last one on the detector posterior probabilities. In the active learning framework, the three first estimators show a significant improvement in performance for the detection of document physical pages and text lines compared to a random selection of images. We also show that the proposed estimator based on descriptive statistics can replace MC dropout, reducing the computational cost without compromising the performances.
翻译:深神经网络正在变得日益强大和庞大,而且总是需要更多标记的数据才能接受培训。然而,由于说明性数据耗费时间,现在必须开发显示良好性能的系统,同时学习有限的数据。必须正确选择这些数据,以获得仍然有效的模型。为此,系统必须能够确定哪些数据应附加说明,以取得最佳结果。在本文件中,我们提议四个估计者来估计物体探测预测的可信度。前两个以蒙特卡洛辍学为基础,第三个以描述性统计为基础,最后一个以探测器后方概率为基础。在主动学习框架内,三个头三个估计者显示,与随机选择图像相比,检测文件物理页和文本线的性能有显著改进。我们还表明,基于描述性统计的拟议估计可取代MC的辍学,在不影响性能的情况下降低计算成本。