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On the Impact of Illumination-Invariant Image Pre-transformation for Contemporary Automotive Semantic Scene Understanding

机译:不变照度预变换对现代汽车语义场景理解的影响

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Illumination changes in outdoor environments under non-ideal weather conditions have a negative impact on automotive scene understanding and segmentation performance. In this paper, we present an evaluation of illuminationinvariant image transforms applied to this application domain. We compare four recent transforms for illumination invariant image representation, individually and with colour hybrid images, to show that despite assumptions to contrary such invariant pre-processing can improve the state of the art in scene understanding performance. In addition, we propose a robust approach based on using an illumination-invariant image representation, combined with the chromatic component of a perceptual colour-space to improve contemporary automotive scene understanding and segmentation. By using an illumination invariant pre-process, to reduce the impact of environmental illumination changes, we show that the performance of deep convolutional neural network based scene understanding and segmentation can yet be further improved. This illuminating result enforces the need for invariant (unbiased) training sets within such deep network training and shows that even a welltrained network may still not offer truly optimal performance (if we ignore any prior data transforms attributable to a priori insight). Our approach is demonstrated over a range of example imagery where we show a notable improvement in performance using pre-processed, illumination invariant, automotive scene imagery.
机译:在非理想天气条件下,室外环境中的照明变化会对汽车场景的理解和分割性能产生负面影响。在本文中,我们对应用于此应用领域的照明不变图像变换进行了评估。我们分别比较了照明不变图像表示和颜色混合图像的四个最新变换,以表明尽管有相反的假设,但这种不变预处理可以改善场景理解性能方面的技术水平。此外,我们提出了一种稳健的方法,该方法基于使用照明不变的图像表示,并结合感知色彩空间的色度分量,以改善当代汽车场景的理解和分割。通过使用光照不变预处理,以减少环境光照变化的影响,我们表明基于深度卷积神经网络的场景理解和分割性能仍可以进一步提高。这种启发性的结果迫使在这样的深度网络训练中需要不变的(无偏的)训练集,并且表明即使一个训练有素的网络也可能仍然无法提供真正的最佳性能(如果我们忽略了由于先验见解而导致的任何先前数据转换)。我们的方法在一系列示例图像中得到了证明,其中使用预处理的光照不变的汽车场景图像可以显着改善性能。

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