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Approach to an FPGA embedded, autonomous object recognition system: run-time learning and adaptation

机译:FPGA嵌入式自主对象识别系统的方法:运行时学习和自适应

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Neural networks, widely used in pattern recognition, security applications and robot control have been chosen for the task of object recognition within this system. One of the main drawbacks of the implementation of traditional neural networks in reconfigurable hardware is the huge resource consuming demand. This is due not only to their intrinsic parallelism, but also to the traditional big networks designed. However, modern FPGA architectures arc perfectly suited for this kind of massive parallel computational needs. Therefore, our proposal is the implementation of Tiny Neural Networks, TNN -self-coined term-, in reconfigurable architectures. One of most important features of TNNs is their learning ability. Therefore, what we show here is the attempt to rise the autonomy features of the system, triggering a new learning phase, at run-time, when necessary. In this way, autonomous adaptation of the system is achieved. The system performs shape identification by the interpretation of object singularities. This is achieved by interconnecting several specialized TNN that work cooperatively. In order to validate the research, the system has been implemented and configured as a perceptron-like TNN with backpropagation learning and applied to the recognition of shapes. Simulation results show that this architecture has significant performance benefits.
机译:选择了广泛用于模式识别,安全应用和机器人控制的神经网络来完成该系统中的对象识别任务。在可重构硬件中实现传统神经网络的主要缺点之一是巨大的资源消耗需求。这不仅是由于它们固有的并行性,而且还因为设计了传统的大型网络。但是,现代FPGA体系结构非常适合此类大规模并行计算需求。因此,我们的建议是在可重配置架构中实现Tiny Neural Networks,即TNN(自称术语)。 TNN的最重要特征之一是其学习能力。因此,我们在这里展示的是尝试提高系统的自治功能,并在必要时在运行时触发新的学习阶段。这样,实现了系统的自主适应。该系统通过解释对象的奇异点来执行形状识别。这是通过互连几个协同工作的专用TNN来实现的。为了验证该研究,该系统已实现并配置为具有反向传播学习功能的类似感知器的TNN,并已应用于形状识别。仿真结果表明,该架构具有明显的性能优势。

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