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Smartphone-Based System for Learning and Inferring Hearing Aid Settings

机译:基于智能手机的系统用于学习和推断助听器设置

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摘要

BackgroundPrevious research has shown that hearing aid wearers can successfully self-train their instruments’ gain-frequency response and compression parameters in everyday situations. Combining hearing aids with a smartphone introduces additional computing power, memory, and a graphical user interface that may enable greater setting personalization. To explore the benefits of self-training with a smartphone-based hearing system, a parameter space was chosen with four possible combinations of microphone mode (omnidirectional and directional) and noise reduction state (active and off). The baseline for comparison was the “untrained system,” that is, the manufacturer’s algorithm for automatically selecting microphone mode and noise reduction state based on acoustic environment. The “trained system” first learned each individual’s preferences, self-entered via a smartphone in real-world situations, to build a trained model. The system then predicted the optimal setting (among available choices) using an inference engine, which considered the trained model and current context (e.g., sound environment, location, and time).
机译:背景先前的研究表明,助听器佩戴者可以在日常情况下成功地自我训练其乐器的增益频率响应和压缩参数。将助听器与智能手机结合使用会带来额外的计算能力,内存和图形用户界面,从而可以实现更大的设置个性化。为了探索使用基于智能手机的听力系统进行自我训练的好处,选择了一个参数空间,其中麦克风模式(全向和定向)和降噪状态(活动和关闭)有四种可能的组合。比较的基准是“未经训练的系统”,即制造商根据声学环境自动选择麦克风模式和降噪状态的算法。 “训练有素的系统”首先了解了每个人的偏好,并在现实情况下通过智能手机自行输入了他们的偏好,以建立训练有素的模型。然后,系统使用推理引擎预测最佳设置(在可用选择中),其中考虑训练过的模型和当前上下文(例如,声音环境,位置和时间)。

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