The real-time segmentation of drivable areas plays a vital role in accomplishing autonomous perception in cars. Recently there have been some rapid strides in the development of image segmentation models using deep learning. However, most of the advancements have been made in model architecture design. In solving any supervised deep learning problem related to segmentation, the success of the model that one builds depends upon the amount and quality of input training data we use for that model. This data should contain well-annotated varied images for better working of the segmentation model. Issues like this pertaining to annotations in a dataset can lead the model to conclude with overwhelming Type I and II errors in testing and validation, causing malicious issues when trying to tackle real world problems. To address this problem and to make our model more accurate, dynamic, and robust, data augmentation comes into usage as it helps in expanding our sample training data and making it better and more diversified overall. Hence, in our study, we focus on investigating the benefits of data augmentation by analyzing pre-existing image datasets and performing augmentations accordingly. Our results show that the performance and robustness of existing state of the art (or SOTA) models can be increased dramatically without any increase in model complexity or inference time. The augmentations decided on and used in this paper were decided only after thorough research of several other augmentation methodologies and strategies and their corresponding effects that are in widespread usage today. All our results are being reported on the widely used Cityscapes Dataset.
翻译:在汽车中实现自主感知方面,可耕地的实时分割在汽车中发挥着关键作用。最近,在利用深层学习开发图像分割模型方面,取得了一些迅速的进展。然而,在模型结构设计方面,大多数进展都是在模型结构设计方面。在解决与分割有关的任何有监督的深层次学习问题方面,一个建建建模型的成功取决于我们用于该模型的投入培训数据的数量和质量。这个数据应当包含各种附加说明的图像,以便更好地运用分类模型。类似这样的问题与数据集中的注释有关,可以导致模型在测试和验证中出现巨大的第一类和第二类错误,从而在试图解决真实的世界问题时造成恶意问题。为了解决这一问题,并使我们的模型更加准确、动态和稳健,数据增加将被用于帮助扩大我们的样本培训数据,使之更好和更加多样化。因此,在我们的研究中,我们的重点是通过分析先前存在的图像数据集并相应地进行扩展。我们的结果表明,在今天的广泛应用的艺术(或SOTA)类型模型的绩效和稳健性结果中,在目前所使用的各种快速性模型和快速性模型中,在目前所使用的方法中,在更大程度后,在这种增强性模型中只能被广泛使用。