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Robot Service for Elderly to Find Misplaced Items: A Resource Efficient Implementation on Low-Computational Device

机译:老年人的机器人服务,以查找错放的物品:低计算量设备上的资源高效实现

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Elderly people often forget to put the items they need due to decreased memory. In this study, we developed an Integrated platform assistance robot providing support to elderly people. We developed a robot assistant platform that was equipped with an indoor positioning system that can help the elderly find misplaced items. Deep learning already has good accuracy in detecting the object but requires great computation resources. When applied to devices that have limited computing and memory capabilities such as robots, the computation time becomes slow or not applicable. We built a lightweight CNN that could run on a single board computer. To improve the accuracy of the network, we apply knowledge distillation by using an extensive network (YOLOv3) as a teacher. To increase computational speed, we do it by reducing the number of layers by implementing batch normalization fission. After being tested on the YOLO, knowledge distillation method can be used to increase accuracy, batch normalization fission will increase computation speed. From the experiment results using the VOC dataset on YOLO architecture with MobileNet feature extractor, the knowledge distillation method can increase accuracy by 9.4% from 0.3850 mAP to 0.4215 mAP and batch normalization fission can speeds up the computation time to 100.7% from 8.3 FPS to 16.66 FPS on CPU i7. The Knowledge Distillation successfully increase the model’s accuracy, reducing the model’s size, and batch normalization fusion method can speed up the detection process.
机译:由于记忆力下降,老年人经常忘记放所需的物品。在这项研究中,我们开发了一种集成式平台辅助机器人,为老年人提供支持。我们开发了配备了室内定位系统的机器人辅助平台,该系统可以帮助老年人找到放错地方的物品。深度学习在检测对象方面已经具有良好的准确性,但是需要大量的计算资源。当将其应用于具有有限计算和存储功能的设备(例如机器人)时,计算时间会变慢或不适用。我们构建了可以在单板计算机上运行的轻量级CNN。为了提高网络的准确性,我们通过使用广泛的网络(YOLOv3)作为老师来应用知识提炼。为了提高计算速度,我们通过实现批量归一化裂变来减少层数来实现。在YOLO上进行测试后,可以使用知识蒸馏方法来提高准确性,批量归一化裂变将提高计算速度。根据使用带有MobileNet特征提取器的YOLO架构上的VOC数据集的实验结果,知识蒸馏方法可以将精度从0.3850 mAP提高到0.4215 mAP 9.4%,并且批量归一化裂变可以将计算时间从8.3 FPS加快到100.7%到16.66 CPU i7上的FPS。知识蒸馏技术成功地提高了模型的准确性,减小了模型的尺寸,并且批次归一化融合方法可以加快检测过程。

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