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Blind Image Quality Prediction for Object Detection

机译:用于目标检测的盲图质量预测

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Automatic video data analysis tools have become indispensable components in today's imaging applications. The accuracy of automatic analysis methods relies on the quality of images or videos that are processed. It is therefore essential to introduce objective metrics for predicting the quality of images as evaluated by automatic analysis algorithms. Object detection is the first and the most important step in the process of automatic video analysis. This paper proposes a new image quality model for predicting the performance of object detection. A video data set is constructed that considers different factors related to quality degradation in the imaging process, such as reduced image resolution, noise, and blur. The performances of commonly used low-complexity object detection algorithms are obtained for the data set. A no-reference regression model based on a bagging ensemble of regression trees is built to predict the accuracy of object detection using observable features in an image. Experimental results show that the proposed model provides more accurate predictions of image quality for object detection than commonly known image quality measures such as PSNR and SSIM.
机译:自动视频数据分析工具已成为当今成像应用中必不可少的组件。自动分析方法的准确性取决于所处理图像或视频的质量。因此,必须引入客观指标来预测由自动分析算法评估的图像质量。目标检测是自动视频分析过程中的第一步,也是最重要的一步。本文提出了一种新的图像质量模型,用于预测目标检测的性能。构造视频数据集,考虑与成像过程中质量下降有关的不同因素,例如降低的图像分辨率,噪声和模糊。针对数据集获得了常用的低复杂度目标检测算法的性能。建立基于回归树的装袋集合的无参考回归模型,以使用图像中的可观察特征预测对象检测的准确性。实验结果表明,与常用的图像质量度量(例如PSNR和SSIM)相比,该模型为目标检测提供了更为准确的图像质量预测。

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