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Lightweight Modal Regression for Stand Alone Embedded Systems

机译:独立嵌入式系统的轻量级模态回归

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Although the CPU power of recent embedded systems has increased, their storage space is still limited. To overcome this limitation, most embedded devices are connected to a cloud server so they can outsource heavy calculations. However, some applications must handle private data, meaning internet connections are undesirable based on security concerns. Therefore, small devices that handle private data should be able to work without internet connections. This paper presents a limited modal regression model that restricts the number of internal units to a certain fixed number. Modal regression can be used for multivalued function approximation with limited sensory inputs. In this study, a kernel density estimator (KDE) with a fixed number of kernels called "limited KDE" was constructed. We will demonstrate how to implement the limited KDE and how to construct a lightweight algorithm for modal regression using a system-on-chip field-programmable gate array device.
机译:尽管最近的嵌入式系统的CPU性能有所提高,但是它们的存储空间仍然有限。为了克服此限制,大多数嵌入式设备都连接到云服务器,因此它们可以外包大量计算。但是,某些应用程序必须处理私有数据,这意味着出于安全考虑,不希望使用Internet连接。因此,处理私有数据的小型设备应该能够在没有Internet连接的情况下工作。本文提出了一个有限的模态回归模型,该模型将内部单位的数量限制为一定的固定数量。模态回归可用于具有有限感官输入的多值函数逼近。在这项研究中,构建了具有固定数量内核(称为“受限KDE”)的内核密度估计器(KDE)。我们将演示如何实现有限的KDE,以及如何使用片上系统现场可编程门阵列器件构建用于模式回归的轻量级算法。

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