Recent advances in deep learning have led to the development of accurate and efficient models for various computer vision applications such as object classification, semantic segmentation, and object detection. However, learning highly accurate models relies on the availability of datasets with a large number of annotated images. Due to this, model performance drops drastically when evaluated on label-scarce datasets having visually distinct images. This issue is commonly referred to as covariate shift or dataset bias. Domain adaptation attempts to address this problem by leveraging domain shift characteristics from labeled data in a related domain when learning a classifier for label-scarce target dataset. There are a plethora of works to adapt object classification and semantic segmentation models to label-scarce target dataset through unsupervised domain adaptation. Considering that object detection is a fundamental task in computer vision, many recent works have recently focused on addressing the domain adaptation issue for object detection as well. In this paper, we provide a brief introduction to the domain adaptation problem for object detection and present an overview of various methods proposed to date for addressing this problem. Furthermore, we highlight strategies proposed for this problem and the associated shortcomings. Subsequently, we identify multiple aspects of the unsupervised domain adaptive detection problem that are most promising for future research in the area. We believe that this survey shall be valuable to the pattern recognition experts working in the fields of computer vision, biometrics, medical imaging, and autonomous navigation by introducing them to the problem, getting them familiar with the current status of the progress, and providing them with promising direction for future research.
翻译:最近深层学习的进展导致为各种计算机视觉应用,如物体分类、语义分解和物体探测等开发了准确而高效的计算机视觉应用模型。然而,学习高度准确的模型取决于是否有带有大量附加说明图像的数据集。因此,在对带有视觉不同的图像的标签碎片数据集进行评估时,模型性能会急剧下降。这个问题通常被称为“共变转移”或数据设置偏差。在相关领域学习标签标记目标数据集的分类师时,通过利用域名从标记数据转换特性来解决这一问题。有许许多多的工作来调整对象分类和语义分解模型,使之适应标签标记标记目标数据集。因此,模型性能在评估标签碎片数据集时会急剧下降。考虑到在计算机视觉图象中,最近许多工作的重点通常被称作“共同变换”或“数据设置偏差”问题。在本文中,我们简要介绍了域域域域的适应问题,并概述了为解决这一问题而提议的各种方法。此外,我们强调,目前为标签分类和语系目标目标目标分类所设计的分类和语义分类模型设计的战略,因此,我们今后要先行能了解。我们先了解。