Difficulty Estimation with Action Scores for Computer Vision Tasks

Octavio Arriaga, Sebastián M. Palacio, Matias Valdenegro-Toro
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引用次数: 0

Abstract

As more machine learning models are now being applied in real world scenarios it has become crucial to evaluate their difficulties and biases. In this paper we present an unsupervised method for calculating a difficulty score based on the accumulated loss per epoch. Our proposed method does not require any modification to the model, neither any external supervision, and it can be easily applied to a wide range of machine learning tasks. We provide results for the tasks of image classification, image segmentation, and object detection. We compare our score against similar metrics and provide theoretical and empirical evidence of their difference. Furthermore, we show applications of our proposed score for detecting incorrect labels, and test for possible biases.
基于动作分数的计算机视觉任务难度估计
随着越来越多的机器学习模型被应用到现实世界的场景中,评估它们的困难和偏见变得至关重要。在本文中,我们提出了一种基于每个epoch的累积损失来计算难度分数的无监督方法。我们提出的方法不需要对模型进行任何修改,也不需要任何外部监督,并且可以很容易地应用于广泛的机器学习任务。我们为图像分类、图像分割和目标检测任务提供结果。我们将我们的分数与类似的指标进行比较,并提供理论和经验证据来证明它们的差异。此外,我们展示了我们提出的分数在检测不正确标签和测试可能的偏差方面的应用。
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