服务机器人应用中基于CNN的家务对象可靠分类

R. Luo, H. Lin, Yu-Ting Hsu
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引用次数: 2

摘要

家务服务是服务机器人的理想功能之一。对象分类是搜索对象时最重要的功能。我们认为主要的问题是机器人不应该对物体进行错误的分类。如果机器人对家庭物体图像进行了错误分类,那么它将使用错误的物体执行家庭任务。这可能会对服务机器人和用户造成严重的损害。这个概念让我们了解到,通过设置置信度阈值,分类的精度必须非常高,这样它才能声称是可靠的服务机器人。通过对这一概念的探索,我们提出了一个更有说服力的指标——分类可靠性,来揭示深度学习模型的可靠性。此外,我们开发了一个微调规则库,不断为CNN模型生成更合适的训练数据集,以提高可靠性。实验结果表明,经过闭环系统微调的CNN模型在CIFAR-10数据集上的可靠性高于DenseNet等其他类似效果。
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CNN Based Reliable Classification of Household Chores Objects for Service Robotics Applications
Household chores service is one of the desirable functions for a service robot. Object classification is the most important function when searching for objects. We consider that the major concern is that the robot should not misclassify the object. If the robot misclassifies household object images, it will then perform the household tasks with the wrong object. This may cause serious damages to a service robot and to the user. This concept gives us the insight that the precision of the classification must be very high by setting a confidence threshold so that it then can claim a reliable service robot. By exploring this concept, we develop a more convincing indicator, Classification Reliability, to reveal the reliability of deep learning model. Moreover, we develop a fine-tune rule base to continuously regenerate more proper training dataset for the CNN model to increase reliability. Experimental results demonstrate that the CNN model fine-tuned by our closed-loop system achieves the reliability which is higher than the other similar effects such as DenseNet on the CIFAR-10 dataset.
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