A Novel Dataset for Evaluating and Alleviating Domain Shift for Human Detection in Agricultural Fields
This addresses domain shift for human detection in agricultural fields, which is an incremental improvement with specific application to robotics.
The paper tackles the problem of domain shift in human detection models for agricultural robotics by introducing the OpenDR Humans in Field dataset, showing that good performance can be achieved even with only negative samples and that positive samples improve localization.
In this paper we evaluate the impact of domain shift on human detection models trained on well known object detection datasets when deployed on data outside the distribution of the training set, as well as propose methods to alleviate such phenomena based on the available annotations from the target domain. Specifically, we introduce the OpenDR Humans in Field dataset, collected in the context of agricultural robotics applications, using the Robotti platform, allowing for quantitatively measuring the impact of domain shift in such applications. Furthermore, we examine the importance of manual annotation by evaluating three distinct scenarios concerning the training data: a) only negative samples, i.e., no depicted humans, b) only positive samples, i.e., only images which contain humans, and c) both negative and positive samples. Our results indicate that good performance can be achieved even when using only negative samples, if additional consideration is given to the training process. We also find that positive samples increase performance especially in terms of better localization. The dataset is publicly available for download at https://github.com/opendr-eu/datasets.