首页 /研究 /Multi-Task Learning for Robot Perception with Imbalanced Data
PERCEPTION

Multi-Task Learning for Robot Perception with Imbalanced Data

Ozgur Erkent

发表年份
2026
访问权限
开放获取

摘要

Multi-task problem solving has been shown to improve the accuracy of the individual tasks, which is an important feature for robots, as they have a limited resource. However, when the number of labels for each task is not equal, namely imbalanced data exist, a problem may arise due to insufficient number of samples, and labeling is not very easy for mobile robots in every environment. We propose a method that can learn tasks even in the absence of the ground truth labels for some of the tasks. We also provide a detailed analysis of the proposed method. An interesting finding is related to the interaction of the tasks. We show a methodology to find out which tasks can improve the performance of other tasks. We investigate this by training the teacher network with the task outputs such as depth as inputs. We further provide empirical evidence when trained with a small amount of data. We use semantic segmentation and depth estimation tasks on different datasets, NYUDv2 and Cityscapes.

关键词

cs.ROcs.CV

相关论文

查看 PERCEPTION 分类全部论文