交互式测试驱动对象检测器:评估未标记数据上的性能

Rushil Anirudh, P. Turaga
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引用次数: 5

摘要

在本文中,我们研究了“试驾”检测器的问题,即允许人类用户快速了解检测器对其特定需求的泛化程度。为此,我们提出了第一个系统,该系统可以交互式地估计探测器的性能,而不需要在环路中使用人类进行广泛的地面真实性。我们将此视为估计比例的问题,并表明仅通过观察数据中5 - 10%的样本,就可以准确推断出大型数据集合中类别或组的比例。在估计误检(为了精度)时,要仔细选择样本,以便保留数据收集的总体特征。接下来,受其在估计疾病传播中的应用的启发,我们应用池测试方法来估计数据集中的未检出(召回率)。由此获得的估计值与使用地面真值获得的估计值接近,从而减少了昂贵且耗时的大量标记的需要。
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Interactively test driving an object detector: Estimating performance on unlabeled data
In this paper, we study the problem of `test-driving' a detector, i.e. allowing a human user to get a quick sense of how well the detector generalizes to their specific requirement. To this end, we present the first system that estimates detector performance interactively without extensive ground truthing using a human in the loop. We approach this as a problem of estimating proportions and show that it is possible to make accurate inferences on the proportion of classes or groups within a large data collection by observing only 5 - 10% of samples from the data. In estimating the false detections (for precision), the samples are chosen carefully such that the overall characteristics of the data collection are preserved. Next, inspired by its use in estimating disease propagation we apply pooled testing approaches to estimate missed detections (for recall) from the dataset. The estimates thus obtained are close to the ones obtained using ground truth, thus reducing the need for extensive labeling which is expensive and time consuming.
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