RB-Dust - A Reference-based Dataset for Vision-based Dust Removal

P. Buckel, T. Oksanen, Thomas Dietmueller
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Abstract

Dust in the agricultural landscape is a significant challenge and influences, for example, the environmental perception of autonomous agricultural machines. Image enhancement algorithms can be used to reduce dust. However, these require dusty and dust-free images of the same environment for validation. In fact, to date, there is no dataset that we are aware of that addresses this issue. Therefore, we present the agriscapes RB-Dust dataset, which is named after its purpose of reference-based dust removal. It is not possible to take pictures from the cabin during tillage, as this would cause shifts in the images. Because of this, we built a setup from which it is possible to take images from a stationary position close to the passing tractor. The test setup was based on a half-sided gate through which the tractor could drive. The field tests were carried out on a farm in Bavaria, Germany, during tillage. During the field tests, other parameters such as soil moisture and wind speed were controlled, as these significantly affect dust development. We validated our dataset with contrast enhancement and image dehazing algorithms and analyzed the generalizability from recordings from the moving tractor. Finally, we demonstrate the application of dust removal based on a high-level vision task, such as person classification. Our empirical study confirms the validity of RB-Dust for vision-based dust removal in agriculture.
RB-Dust -基于参考的基于视觉的粉尘去除数据集
农业景观中的灰尘是一个重大的挑战和影响,例如,自主农业机械的环境感知。图像增强算法可以用来减少灰尘。但是,这些需要同一环境的有尘和无尘图像进行验证。事实上,到目前为止,据我们所知,还没有一个数据集可以解决这个问题。因此,我们提出了agriscapes RB-Dust数据集,该数据集以其基于参考的除尘目的而命名。在耕作期间,不可能从小屋拍摄照片,因为这会导致图像的变化。正因为如此,我们建立了一个装置,可以从靠近过往拖拉机的静止位置拍摄图像。测试设置是基于一个半边门,拖拉机可以通过它行驶。田间试验是在德国巴伐利亚的一个农场耕作期间进行的。在现场试验中,控制了土壤湿度和风速等其他参数,因为这些参数对粉尘的发展有显著影响。我们使用对比度增强和图像去雾算法验证了我们的数据集,并分析了移动拖拉机记录的泛化性。最后,我们展示了基于高级视觉任务(如人物分类)的除尘应用。我们的实证研究证实了RB-Dust在农业视觉降尘中的有效性。
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