Test-time adaptation (TTA) has attracted significant attention due to its practical properties which enable the adaptation of a pre-trained model to a new domain with only target dataset during the inference stage. Prior works on TTA assume that the target dataset comes from the same distribution and thus constitutes a single homogeneous domain. In practice, however, the target domain can contain multiple homogeneous domains which are sufficiently distinctive from each other and those multiple domains might occur cyclically. Our preliminary investigation shows that domain-specific TTA outperforms vanilla TTA treating compound domain (CD) as a single one. However, domain labels are not available for CD, which makes domain-specific TTA not practicable. To this end, we propose an online clustering algorithm for finding pseudo-domain labels to obtain similar benefits as domain-specific configuration and accumulating knowledge of cyclic domains effectively. Moreover, we observe that there is a significant discrepancy in terms of prediction quality among samples, especially in the CD context. This further motivates us to boost its performance with gradient denoising by considering the image-wise similarity with the source distribution. Overall, the key contribution of our work lies in proposing a highly significant new task compound domain test-time adaptation (CD-TTA) on semantic segmentation as well as providing a strong baseline to facilitate future works to benchmark.
翻译:试验时间适应(TTA)由于其实际性质,吸引了人们的极大关注,因为其实际性能使得经过预先训练的模式能够适应新领域,在推论阶段只设定目标数据集,TTA以前的工作假设目标数据集来自同一分布,因此构成单一的域;然而,在实践中,目标域可以包含相互之间足够区别的多个单一域,而这些多个域可能会周期性地发生。我们的初步调查显示,具体领域的TTTA优于将复合域(CD)作为单一域处理的香草 TTA。然而,光盘没有域名,这使得具体域名TTTA变得不可行。为此,我们提议采用在线群集算算法,寻找假域名数据集,以获得类似于特定域配置的类似惠益,并有效地积累环球域的知识。此外,我们注意到,在预测样本质量方面存在着重大差异,特别是在光盘方面。这进一步激励我们通过考虑与源码分布相近的图像来提升其性分解性。总体而言,我们的工作的主要贡献在于提供一个具有高度重要性的任务基准的域域的SATTTA。