Sound event detection with binary neural networks on tightly power-constrained IoT devices

G. Cerutti, Renzo Andri, L. Cavigelli, Elisabetta Farella, M. Magno, L. Benini
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引用次数: 28

Abstract

Sound event detection (SED) is a hot topic in consumer and smart city applications. Existing approaches based on deep neural networks (DNNs) are very effective, but highly demanding in terms of memory, power, and throughput when targeting ultra-low power always-on devices. Latency, availability, cost, and privacy requirements are pushing recent IoT systems to process the data on the node, close to the sensor, with a very limited energy supply, and tight constraints on the memory size and processing capabilities precluding to run state-of-the-art DNNs. In this paper, we explore the combination of extreme quantization to a small-footprint binary neural network (BNN) with the highly energy-efficient, RISC-V-based (8+1)-core GAP8 microcontroller. Starting from an existing CNN for SED whose footprint (815 kB) exceeds the 512 kB of memory available on our platform, we retrain the network using binary filters and activations to match these memory constraints. (Fully) binary neural networks come with a natural drop in accuracy of 12-18% on the challenging ImageNet object recognition challenge compared to their equivalent full-precision baselines. This BNN reaches a 77.9% accuracy, just 7% lower than the full-precision version, with 58 kB (7.2× less) for the weights and 262 kB (2.4× less) memory in total. With our BNN implementation, we reach a peak throughput of 4.6 GMAC/s and 1.5 GMAC/s over the full network, including preprocessing with Mel bins, which corresponds to an efficiency of 67.1 GMAC/s/W and 31.3 GMAC/s/W, respectively. Compared to the performance of an ARM Cortex-M4 implementation, our system has a 10.3× faster execution time and a 51.1× higher energy-efficiency.
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在功率严格限制的物联网设备上使用二进制神经网络进行声音事件检测
声音事件检测(SED)是消费类和智慧城市应用领域的一个热点。现有的基于深度神经网络(dnn)的方法非常有效,但在针对超低功耗的始终在线设备时,对内存、功率和吞吐量的要求很高。延迟、可用性、成本和隐私要求正在推动最近的物联网系统在节点上处理数据,靠近传感器,能量供应非常有限,并且对内存大小和处理能力的严格限制阻碍了运行最先进的dnn。在本文中,我们探索了将极端量化与基于risc - v的高能效(8+1)核GAP8微控制器的小占用二进制神经网络(BNN)相结合。从现有的SED CNN开始,其占用空间(815 kB)超过了我们平台上可用的512 kB内存,我们使用二进制过滤器和激活来重新训练网络以匹配这些内存约束。与同等的全精度基线相比,在具有挑战性的ImageNet对象识别挑战中,(完全)二元神经网络的准确率自然下降了12-18%。该BNN的准确率达到77.9%,仅比全精度版本低7%,权重为58 kB(减少7.2倍),内存总量为262 kB(减少2.4倍)。通过我们的BNN实现,我们在整个网络上达到了4.6 GMAC/s和1.5 GMAC/s的峰值吞吐量,包括Mel bin的预处理,其效率分别为67.1 GMAC/s/W和31.3 GMAC/s/W。与ARM Cortex-M4实现的性能相比,我们的系统的执行时间加快了10.3倍,能效提高了51.1倍。
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