Curriculum learning and self-paced learning are the training strategies that gradually feed the samples from easy to more complex. They have captivated increasing attention due to their excellent performance in robotic vision. Most recent works focus on designing curricula based on difficulty levels in input samples or smoothing the feature maps. However, smoothing labels to control the learning utility in a curriculum manner is still unexplored. In this work, we design a paced curriculum by label smoothing (P-CBLS) using paced learning with uniform label smoothing (ULS) for classification tasks and fuse uniform and spatially varying label smoothing (SVLS) for semantic segmentation tasks in a curriculum manner. In ULS and SVLS, a bigger smoothing factor value enforces a heavy smoothing penalty in the true label and limits learning less information. Therefore, we design the curriculum by label smoothing (CBLS). We set a bigger smoothing value at the beginning of training and gradually decreased it to zero to control the model learning utility from lower to higher. We also designed a confidence-aware pacing function and combined it with our CBLS to investigate the benefits of various curricula. The proposed techniques are validated on four robotic surgery datasets of multi-class, multi-label classification, captioning, and segmentation tasks. We also investigate the robustness of our method by corrupting validation data into different severity levels. Our extensive analysis shows that the proposed method improves prediction accuracy and robustness.
翻译:课程学习和自定进度学习是逐步将样本从简单到更复杂的培训战略,由于机器人愿景的优异性能,它们吸引了越来越多的注意力。最近的工作重点是根据输入样本中的难度或平滑地貌图的平滑程度设计课程。然而,以课程方式控制学习效用的平滑标签仍未得到探索。在这项工作中,我们设计一个节奏课程,用统一标签平滑(P-CBLS)的节奏学习方式,用统一标签平滑(ULS)为分类任务调和统一和空间差异的平滑标签(SVLS),以课程方式对语义分解任务进行调整。在ULS和SVLS中,一个更大的平滑因素值在输入样本的难度上设计课程设计课程设计课程;因此,我们用平滑标签来设计课程设计课程。我们在培训开始时设置了一个更大的平滑值,逐渐减为零,以控制从较低到更高层次的模型学习效用。我们还设计了一种宽度的平滑度功能,并将它与我们的CBLS的平滑性平滑度结合起来,同时将它与我们的平滑度结合起来,我们调查了四套式手术方法的计算方法,我们提出了各种数据分析。我们的数据结构的精确性分析,我们提出了四级化的方法,我们的数据分析是核查。