To ensure safety in automated driving, the correct perception of the situation inside the car is as important as its environment. Thus, seat occupancy detection and classification of detected instances play an important role in interior sensing. By the knowledge of the seat occupancy status, it is possible to, e.g., automate the airbag deployment control. Furthermore, the presence of a driver, which is necessary for partially automated driving cars at the automation levels two to four can be verified. In this work, we compare different statistical methods from the field of image segmentation to approach the problem of background-foreground segmentation in camera based interior sensing. In the recent years, several methods based on different techniques have been developed and applied to images or videos from different applications. The peculiarity of the given scenarios of interior sensing is, that the foreground instances and the background both contain static as well as dynamic elements. In data considered in this work, even the camera position is not completely fixed. We review and benchmark three different methods ranging, i.e., Gaussian Mixture Models (GMM), Morphological Snakes and a deep neural network, namely a Mask R-CNN. In particular, the limitations of the classical methods, GMM and Morphological Snakes, for interior sensing are shown. Furthermore, it turns, that it is possible to overcome these limitations by deep learning, e.g.\ using a Mask R-CNN. Although only a small amount of ground truth data was available for training, we enabled the Mask R-CNN to produce high quality background-foreground masks via transfer learning. Moreover, we demonstrate that certain augmentation as well as pre- and post-processing methods further enhance the performance of the investigated methods.
翻译:为确保自动驾驶的安全,对汽车内部状况的正确认识与其环境一样重要。因此,对车内状况的正确认识与车内环境一样重要。因此,根据对座位占用状况的了解,根据对座位占用状况的了解,有可能对座位部署控制进行自动化。此外,可以核实驾驶器的存在,这是在自动化水平2至4部分自动化驾驶汽车所必需的。在这项工作中,我们比较了图像分割领域的不同统计方法,以相机为基础的内部感测处理背景地面偏移问题。近年来,根据不同技术开发了一些方法,并应用于不同应用程序的图像或视频。根据对座位占用状况的了解,可以对气袋部署控制进行自动化。此外,在这项工作中考虑的数据中,即使是摄像前的位置也没有完全固定下来。我们审查并衡量了三种不同方法,即高比斯·米克斯杜尔模型(GMM)、软体蛇和深神经网络(Eural-CN),即采用磁带R-CN的深度质量变现方法,通过磁带、磁带变色数据显示,这些变的磁带和磁带变色数据显示,这些系统变的系统变的系统变的演化方法,其演化程度的演化过程的演化方法会提高。特别显示,这些演化方法显示。我们所显示了。