Abstract

The recent development in the area of IoT technologies is likely to be implemented extensively in the next decade. There is a great increase in the crime rate, and the handling officers are responsible for dealing with a broad range of cyber and Internet issues during investigation. IoT technologies are helpful in the identification of suspects, and few technologies are available that use IoT and deep learning together for face sketch synthesis. Convolutional neural networks (CNNs) and other constructs of deep learning have become major tools in recent approaches. A new-found architecture of the neural network is anticipated in this work. It is called Spiral-Net, which is a modified version of U-Net fto perform face sketch synthesis (the phase is known as the compiler network C here). Spiral-Net performs in combination with a pre-trained Vgg-19 network called the feature extractor F. It first identifies the top n matches from viewed sketches to a given photo. F is again used to formulate a feature map based on the cosine distance of a candidate sketch formed by C from the top n matches. A customized CNN configuration (called the discriminator D) then computes loss functions based on differences between the candidate sketch and the feature. Values of these loss functions alternately update C and F. The ensemble of these nets is trained and tested on selected datasets, including CUFS, CUFSF, and a part of the IIT photo–sketch dataset. Results of this modified U-Net are acquired by the legacy NLDA (1998) scheme of face recognition and its newer version, OpenBR (2013), which demonstrate an improvement of 5% compared with the current state of the art in its relevant domain.

Highlights

  • The Internet of Things (IoT) [1] has been playing a key role in the smart city sector, for example, in the security of smart homes, where you, using your smartphone, can decide who can enter your home [2]

  • A detailed account of the implementation scheme is given. It mentions the quality parameters used during this project and, it elaborates upon the evaluation of the performance of the proposed and reference methods

  • CUFSF is more challenging since its photos were captured under different lighting conditions and its viewed sketches show deformations in shape versus the original photos to mimic inherent properties of forensic sketches

Read more

Summary

Introduction

The Internet of Things (IoT) [1] has been playing a key role in the smart city sector, for example, in the security of smart homes, where you, using your smartphone, can decide who can enter your home [2]. Through IoT technology, it is easy to monitor your home at any time from anywhere, and this process helps to develop efficient, safer smart cities [3]. The IoT technology integration with IT devices helps to ease the investigation process, especially in the identification of people [4,5]. IoT and information technology (IT) techniques work together [6]. The major applications where these technologies work together are biometric [7], video surveillance [8], Internet of Vehicles [9], and biomedical [10,11].

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call