论文标题

使用松散和弱标记的图像培训无线传感器网络的深神经网络

Training Deep Neural Networks for Wireless Sensor Networks Using Loosely and Weakly Labeled Images

论文作者

Zhou, Qianwei, Chen, Yuhang, Li, Baoqing, Li, Xiaoxin, Zhou, Chen, Huang, Jingchang, Hu, Haigen

论文摘要

尽管在过去的几年中,深度学习取得了巨大的成功,但很少有关于将深度神经网络应用于无线传感器网络(WSN)以识别图像目标识别的报道。在这项工作中,已经提出了一种具有成本效益的领域概括(CEDG)算法来培训具有最低劳动力需求的有效网络。 CEDG通过自动分配的合成域将网络从公开可用的源域转移到了特定的目标域。目标域是从参数调整中隔离的,仅用于模型选择和测试。目标结构域与源域有显着不同的目标域,因为它具有新的目标类别,并且由低质量的图像组成,这些图像焦点不足,分辨率低,照明低,拍照角度低。训练有素的网络的每个预测都大约有7m(Resnet-20约为41m)乘法,这足以允许数字信号处理器芯片在我们的WSN中进行实时识别。在看不见和不平衡目标域上的类别级别平均误差已减少41.12%。

Although deep learning has achieved remarkable successes over the past years, few reports have been published about applying deep neural networks to Wireless Sensor Networks (WSNs) for image targets recognition where data, energy, computation resources are limited. In this work, a Cost-Effective Domain Generalization (CEDG) algorithm has been proposed to train an efficient network with minimum labor requirements. CEDG transfers networks from a publicly available source domain to an application-specific target domain through an automatically allocated synthetic domain. The target domain is isolated from parameters tuning and used for model selection and testing only. The target domain is significantly different from the source domain because it has new target categories and is consisted of low-quality images that are out of focus, low in resolution, low in illumination, low in photographing angle. The trained network has about 7M (ResNet-20 is about 41M) multiplications per prediction that is small enough to allow a digital signal processor chip to do real-time recognitions in our WSN. The category-level averaged error on the unseen and unbalanced target domain has been decreased by 41.12%.

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