Traditional DL models are complex and resource hungry and thus, care needs to be taken in designing Internet of (medical) things (IoT, or IoMT) applications balancing efficiency-complexity trade-off. Recent IoT solutions tend to avoid using deep-learning methods due to such complexities, and rather classical filter-based methods are commonly used. We hypothesize that a shallow CNN model can offer satisfactory level of performance in combination by leveraging other essential solution-components, such as post-processing that is suitable for resource constrained environment. In an IoMT application context, QRS-detection and R-peak localisation from ECG signal as a case study, the complexities of CNN models and post-processing were varied to identify a set of combinations suitable for a range of target resource-limited environments. To the best of our knowledge, finding a deploy-able configuration, by incrementally increasing the CNN model complexity, as required to match the target's resource capacity, and leveraging the strength of post-processing, is the first of its kind. The results show that a shallow 2-layer CNN with a suitable post-processing can achieve $>$90\% F1-score, and the scores continue to improving for 8-32 layer CNNs, which can be used to profile target constraint environment. The outcome shows that it is possible to design an optimal DL solution with known target performance characteristics and resource (computing capacity, and memory) constraints.
翻译:传统的DL模型复杂,资源饥饿,因此,在设计(医疗)事物(IoT或IOMT)的互联网应用时,需要谨慎对待,平衡效率复杂程度的权衡。最近的IoT解决方案往往避免使用深学习方法,因为如此复杂,而且通常使用传统的过滤法。我们假设浅色CNN模型能够通过利用适合资源受限环境的后处理等其他重要解决方案要素,提供令人满意的业绩,从而可以同时提供令人满意的业绩水平。在IoMT应用环境中,从ECG信号中进行QRS检测和R-poak本地化,作为案例研究,CNN模型和后处理的复杂性特征各不相同,以确定适合一系列目标资源有限环境的组合。根据我们的最佳知识,通过逐步增加CNN模型的复杂性,从而达到目标资源能力的要求,以及利用后处理的最佳能力。结果显示,一个具有适当后处理能力的浅色的2级CNNCN网络继续维持2级的功能,其指标性特点为8>90+RMS-CR-CR-CR-C-CR-C-C-CR-D-D-CR-C-rental-deal-deal-deal-Cal-deal-Cal-Cal-deal-Cal-instrisleg-lational res-inal-leg-legislisal-leg-lection-leg-leg-leg-inal-lection-lection-legal-lemental-legal-lemental-lemental-legisal-legisal-lection-lection-lection-lemental-lection-inal-lection-lection-in-in-in-inal-inal-lemental-inal-inal-inal-inal-inal-inal-inal-inal-inal-inal-inal-inal-lection-inal-inal-inal-inal-inal-inal-inal-inal-inal-in-inal-inal-inal-inal-inal-inal-inal-inal-inal-inal-inal-inal-inal-inal-inal-