Abstract

In the modern era of digitization, the analysis in the Internet of Things (IoT) environment demands a brisk amalgamation of domains such as high-dimension (images) data sensing technologies, robust internet connection (4 G or 5 G) and dynamic (adaptive) deep learning approaches. This is required for a broad range of indispensable intelligent applications, like intelligent healthcare systems. Dynamic image classification is one of the major areas of concern for researchers, which may take place during analysis under the IoT environment. Dynamic image classification is associated with several temporal data perturbations (such as novel class arrival and class evolution issue) which cause a massive classification deterioration in the deployed classification models and make them in-effective. Therefore, this study addresses such temporal inconsistencies (novel class arrival and class evolution issue) and proposes an adapted deep learning framework (ameliorated adaptive convolutional neural network (CNN) ensemble framework), which handles novel class arrival and class evaluation issue during dynamic image classification. The proposed framework is an improved version of previous adaptive CNN ensemble with an additional online training (OT) and online classifier update (OCU) modules. An OT module is a clustering-based approach which uses the Euclidean distance and silhouette method to determine the potential new classes, whereas, the OCU updates the weights of the existing instances of the ensemble with newly arrived samples. The proposed framework showed the desirable classification improvement under non-stationary scenarios for the benchmark (CIFAR10) and real (ISIC 2019: Skin disease) data streams. Also, the proposed framework outperformed against state-of-art shallow learning and deep learning models. The results have shown the effectiveness and proven the diversity of the proposed framework to adapt the new concept changes during dynamic image classification. In future work, the authors of this study aim to develop an IoT-enabled adaptive intelligent dermoscopy device (for dermatologists). Therefore, further improvements in classification accuracy (for real dataset) is the future concern of this study.

Highlights

  • The potential opportunities offered by the abundance of sensors, actuators and communications in the Internet of Things (IoT) environment produces massive and non-stationary input data [1], which demands real-time, online and adaptive analysis approaches [2]

  • The authors of this study have observed that silhouette is more accurate than elbow method but is computation expensive

  • It can be observed the performance of both models continuously improved with the decrease in learning loss

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Summary

Introduction

The potential opportunities offered by the abundance of sensors, actuators and communications in the Internet of Things (IoT) environment produces massive and non-stationary input (image) data [1], which demands real-time, online and adaptive analysis approaches [2]. The static nature of existing deep learning algorithms (for image classification) are not appropriate for such a dynamic environment and requires adaptive approaches to handle the changes (concept drift) during dynamic image classification tasks [4] Such issues are prominent in applications deployed over a non-stationary stream where data is continuously provided to the system. In a study [11] the authors have presented few potential types of concept drift (novel class arrival and class evolution) issues, considering a stream of images whose labels are predicted on-the-fly for automatic categorization. Some studies [14,15], discussed the possible issue of concept drift during imagery stream analysis, such as real-time social media application (SMA). To propose an ameliorated (improved) version of the adapted CNN ensemble framework to handle novel class and class evolution issue during online imagery stream.

Related Work and Theoretical Foundation
Section 3
15: End while
16: Determine novel class or class evolution
Online Training Module
Online Classifier Update Module
Experimental Results
10 Stream
CIFAR10
Experimental
Environment
Hyper-Parameter Optimization and Performance Measures
Experimental Results and Discussion
Experiment 1
Experiment
Experiment 3
10. Confusion and deep
Results Analysis and Deduction
Conclusions and Future Work
Full Text
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