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Using Performance Efficiency for Testing and Optimization of Visual Attention Models

机译:使用性能效率测试和优化视觉注意模型

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When developing a predictive tool for human performance one needs to have clear metrics to evaluate the model's performance. In the area of Visual Attention Modeling (VAM) one typically compares eye-tracking data collected on a group of human observers to the predictions made by a model. To evaluate the performance of these models one typically uses signal detection (Receiver Operating Characteristic (ROC)) that measures the predictive power of the system by comparing the model's predictions for an image to human eye tracking data. These ROC curves take into account the model's hit and false alarm rates and by averaging over a set of test images provides a final measure of the system's performance. In releasing a commercial visual attention system, we have spent considerable effort in developing metrics that allow for regression testing, that are useful for optimizing our visual attention model that takes into account the Upper-Theoretical Performance Limit for an image or classes of images. We describe how the Upper-Theoretical Performance Limit is calculated and how regression testing and parameter optimization benefit from this approach.
机译:在开发人类绩效预测工具时,需要有清晰的指标来评估模型的绩效。在视觉注意力建模(VAM)领域,通常会将在一组人类观察者上收集到的眼动数据与模型所做的预测进行比较。为了评估这些模型的性能,通常使用信号检测(接收器工作特性(ROC)),该信号检测通过将模型对图像的预测与人眼跟踪数据进行比较来测量系统的预测能力。这些ROC曲线考虑了模型的命中率和误报率,并且通过对一组测试图像进​​行平均来提供系统性能的最终度量。在发布商业视觉注意力系统时,我们花费了大量的精力来开发允许进行回归测试的指标,这些指标对于优化我们的视觉注意力模型非常有用,该模型考虑了图像或图像类别的理论上性能上限。我们描述了如何计算“理论上的性能极限”,以及回归测试和参数优化如何从该方法中受益。

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