能有多难呢?估计图像中视觉搜索的难度

Radu Tudor Ionescu, B. Alexe, Marius Leordeanu, M. Popescu, Dim P. Papadopoulos, V. Ferrari
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引用次数: 112

摘要

我们解决了估计图像难度的问题,定义为解决视觉搜索任务的人类响应时间。我们通过众包平台收集PASCAL VOC 2012数据集的图像难度人工标注。然后,我们分析了人类可解释的图像属性对视觉搜索难度的影响,以及这些属性预测难度的准确性。接下来,我们基于使用最先进的卷积神经网络学习的深度特征构建了一个回归模型,并在预测人类注释者产生的真实视觉搜索难度分数方面显示出更好的结果。我们的模型能够根据图像的难度分数对大约75%的图像对进行正确排序。我们还表明,我们的难度预测器可以很好地推广到训练中没有看到的新课程。最后,我们证明了我们预测的难度分数对于弱监督对象定位(提高8%)和半监督对象分类(提高1%)是有用的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
How Hard Can It Be? Estimating the Difficulty of Visual Search in an Image
We address the problem of estimating image difficulty defined as the human response time for solving a visual search task. We collect human annotations of image difficulty for the PASCAL VOC 2012 data set through a crowd-sourcing platform. We then analyze what human interpretable image properties can have an impact on visual search difficulty, and how accurate are those properties for predicting difficulty. Next, we build a regression model based on deep features learned with state of the art convolutional neural networks and show better results for predicting the ground-truth visual search difficulty scores produced by human annotators. Our model is able to correctly rank about 75% image pairs according to their difficulty score. We also show that our difficulty predictor generalizes well to new classes not seen during training. Finally, we demonstrate that our predicted difficulty scores are useful for weakly supervised object localization (8% improvement) and semi-supervised object classification (1% improvement).
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