Abstract

In the realm of intelligent vehicles, gestures can be characterized for promoting automotive interfaces to control in-vehicle functions without diverting the driver’s visual attention from the road. Driver gesture recognition has gained more attention in advanced vehicular technology because of its substantial safety benefits. This research work demonstrates a novel WiFi-based device-free approach for driver gestures recognition for automotive interface to control secondary systems in a vehicle. Our proposed wireless model can recognize human gestures very accurately for the application of in-vehicle infotainment systems, leveraging Channel State Information (CSI). This computationally efficient framework is based on the properties of K Nearest Neighbors (KNN), induced in sparse representation coefficients for significant improvement in gestures classification. In this typical approach, we explore the mean of nearest neighbors to address the problem of computational complexity of Sparse Representation based Classification (SRC). The presented scheme leads to designing an efficient integrated classification model with reduced execution time. Both KNN and SRC algorithms are complimentary candidates for integration in the sense that KNN is simple yet optimized, whereas SRC is computationally complex but efficient. More specifically, we are exploiting the mean-based nearest neighbor rule to further improve the efficiency of SRC. The ultimate goal of this framework is to propose a better feature extraction and classification model as compared to the traditional algorithms that have already been used for WiFi-based device-free gesture recognition. Our proposed method improves the gesture recognition significantly for diverse scale of applications with an average accuracy of 91.4%.

Highlights

  • Distracted driving is one of the main concerns that compromise road safety

  • We present a device-free wireless innovative framework to address the problem of driver gesture recognition by integrating

  • We present a WiFi-based device-free innovative framework to address the problem of driver gesture recognition for the application of vehicle infotainment systems leveraging Channel State Information (CSI)

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Summary

Introduction

Distracted driving is one of the main concerns that compromise road safety. A large number of road accidents are reported because of driver’s engagement in performing conventional secondary tasks using visual-manual interfaces. With the advancements in vehicular technology and the introduction of human computer interaction (HCI), gesture-based touchless automotive interfaces are being incorporated in vehicle designs to reduce driver visual distraction. Human gestures recognition has been widely explored in the literature for a variety of applications to reduce the complexity of human interaction with computers and other digital interfaces [1,2,3,4]. Both KNN and SRC classifiers have been efficiently used in various wireless device-free localization and recognition systems [13,16,17,18]. Conventional SRC is time consuming in the sense that a testing sample is usually represented by all training samples. KNN has the issue of neighborhood size and simple majority voting for the classification, which can degrade its performance

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