This work presents an innovative method for scheduling tasks in a fog computing environments by combining the fuzzy logic with deep reinforcement learning. In Internet of Things there has been a significant raising th...
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This work presents an innovative method for scheduling tasks in a fog computing environments by combining the fuzzy logic with deep reinforcement learning. In Internet of Things there has been a significant raising the amount of data produced by different devices. This has created a need for more effective methods of processing and managing this data. Conventional cloud computing often fails to fulfill the need of IoT usage in terms of high bandwidth, low makespan, and real-timeprocessing. Fog computing presents available solution by placing the processing resources near the data source but the issue of efficient task scheduling remains a major obstacle. We proposed a technique that combines an Hybrid task scheduling technique in fog computing using fuzzy logic and deep reinforcement learning (HTSFFDRL) algorithm with a Takagi-Sugeno fuzzy inference system. By continuously interacting with the environment, this hybrid technique allows for the dynamic prioritization of tasks and the real-time change of scheduling rules. The technique seeks to maximize many crucial performance measures, such as makespan, energy consumption, cost, and fault tolerance. Simulations extensively validate the suggested strategy, demonstrating significant enhancements compared to current approaches like LSTM, DQN, and A2C. The results indicate that combining fuzzy logic with reinforcement learning may greatly improve the effectiveness and dependability of task scheduling in fog computing, opening up possibilities for more resilient IoT applications.
The analysis of Android malware shows that this threat is constantly increasing and is a real threat to mobile devices since traditional approaches,such as signature-based detection,are no longer effective due to the ...
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The analysis of Android malware shows that this threat is constantly increasing and is a real threat to mobile devices since traditional approaches,such as signature-based detection,are no longer effective due to the continuously advancing level of *** resolve this problem,efficient and flexible malware detection tools are *** work examines the possibility of employing deep CNNs to detect Android malware by transforming network traffic into image data ***,the dataset used in this study is the CIC-AndMal2017,which contains 20,000 instances of network traffic across five distinct malware categories:***,***,***,***,*** network traffic features are then converted to image formats for deeplearning,which is applied in a CNN framework,including the VGG16 pre-trained *** addition,our approach yielded high performance,yielding an accuracy of 0.92,accuracy of 99.1%,precision of 98.2%,recall of 99.5%,and F1 score of 98.7%.Subsequent improvements to the classification model through changes within the VGG19 framework improved the classification rate to 99.25%.Through the results obtained,it is clear that CNNs are a very effective way to classify Android malware,providing greater accuracy than conventional *** success of this approach also shows the applicability of deeplearning in mobile security along with the direction for the future advancement of the real-time detection system and other deeper learning techniques to counter the increasing number of threats emerging in the future.
Date In response to the imperative need for mitigating criminal activities and ensuring public safety, this research proposes a novel approach leveraging deeplearning techniques for real-time weapon detection. In con...
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Dorsal hand vein (DHV) recognition is a burgeoning biometric technology that has recently garnered considerable attention. This article uses imageprocessing and deeplearning to present a novel DHV recognition approa...
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Dorsal hand vein (DHV) recognition is a burgeoning biometric technology that has recently garnered considerable attention. This article uses imageprocessing and deeplearning to present a novel DHV recognition approach. It involves detecting and identifying the unique patterns present in the DHV. The proposed system begins with the preprocessing mechanism that is applied to enhance the quality of the acquired images, including contrast enhancement and noise reduction, by using some filters such as Median and Contrast Limited Adaptive Histogram Equalization (CLAHE). Next, a deeplearning model, such as a convolutional neural network (CNN), is employed to automatically abstract discriminative features from the preprocessed vein images. The empirical outcomes prove the influence and reliability of the proposed technique for vein recognition, making it a promising solution for biometric authentication systems. Compared with traditional CNN, the proposed approach shows good accuracy and classification rate results. The suggested model achieved a high recognition rate accuracy, recall, precious, and f-score of 99.7%,97%,96%, and 96%, respectively, and a recognition time of about 1283.45 s. To enrich the model's capability for feature recognition and reduce recognition time, decrease the intricacy of learning and the connectivity CNN structure, an alternative approach based on Restricted Boltzmann Machines (RBM) was assessed. This strategy exhibits superior accuracy in comparison to other contemporary algorithms. The proposed RBM achieved a high recognition rate accuracy, recall, precious, and f-score of 99.9%,99%,99%, and 99%, respectively, and a recognition time of about 137.235s.
Hyperspectral imaging (HSI) has recently emerged as a promising tool for many agricultural applications;however, the technology cannot be directly used in real-time for immediate decision-making and actions due to the...
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Hyperspectral imaging (HSI) has recently emerged as a promising tool for many agricultural applications;however, the technology cannot be directly used in real-time for immediate decision-making and actions due to the extensive time needed to capture, process, and analyze large volumes of data. Consequently, the development of a simple, compact, and cost-effective imaging system is not possible with the current HSI systems. Therefore, the overall goal of this study was to reconstruct hyperspectral images from RGB images through deeplearning for agricultural applications. Specifically, this study used Hyperspectral Convolutional Neural Network - Dense (HSCNN-D) to reconstruct hyperspectral images from RGB images for predicting soluble solid content (SSC) in sweet potatoes. The algorithm reconstructed the hyperspectral images from RGB images, with the resulting spectra closely matching the ground-truth. The partial least squares regression (PLSR) model based on reconstructed spectra outperformed the model using the full spectral range, demonstrating its potential for SSC prediction in sweet potatoes. These findings highlight the potential of deeplearning-based hyperspectral image reconstruction as a low-cost, efficient tool for various agricultural uses.
In this paper, we propose a face detection and recognition system using deeplearning method. It can be used as an access control system that performs face detection and recognition in real-timeprocessing. Our goal i...
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In this paper, we propose a face detection and recognition system using deeplearning method. It can be used as an access control system that performs face detection and recognition in real-timeprocessing. Our goal is to achieve a one-shot recognition instead of traditional two-step methods. We use SSD as the main model for face detection and VGG-Face as the main model for face recognition. We perform the deeplearning method through the collection of datasets. Moreover, we use some techniques, such as data augmentation, preprocessing of the image, and post-processing of the image to train the robust face detection and recognition subsystems. We use continuous frames as input to avoid false-positive cases and make the system output without wrong results. A real demonstration system is constructed to determine the identification of the laboratory members. We use 1280 x 960 resolution video for experimental testing and achieve about 30 fps speed under GPU acceleration.
High dynamic range (HDR) images capture real-world luminance values which cannot be directly displayed on the screen and require tone mapping to be shown on low dynamic range (LDR) hardware. During this transformation...
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High dynamic range (HDR) images capture real-world luminance values which cannot be directly displayed on the screen and require tone mapping to be shown on low dynamic range (LDR) hardware. During this transformation, tone mapping algorithms are expected to preserve the naturalness and structural details of the image. In this regard, the performance of atone mapping algorithm can be evaluated through a subjective study where participants rank or score tone mapped images based on their preferences. However, such subjective evaluations can be time-consuming and cannot be repeated for every tone mapped image. To address this issue, numerous quantitative metrics have been proposed for objective evaluation. This paper presents a robust objective metric based on deeplearning to quantify image quality. We assess the performance of our proposed metric by comparing it to 20 existing state-of-theart metrics using two subjective datasets, including one benchmark dataset and a novel proposed dataset of 666 tone mapped images comprising a variety of scenes and labeled by 20 users. Our approach exhibits the highest correlation with subjective scores in both evaluations, confirming its effectiveness and potential to be a reliable alternative to laborious subjective studies.
Enhancing the quality of the images acquired under the water environments is crucial in many broadcast technologies. As the richness of the features generated by deep underwater image enhancement networks improves, th...
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Enhancing the quality of the images acquired under the water environments is crucial in many broadcast technologies. As the richness of the features generated by deep underwater image enhancement networks improves, the visual signals with higher qualities can be yielded. In view of this, in this paper, we propose a new deep network for the task of underwater image enhancement, in which the network feature generation process is guided by the prior information obtained from various underwater medium transmission map and atmospheric light estimation methods. Further, in order to obtain high values for different image quality assessment metrics associated with the images produced by the proposed network, we introduce a multi-stage training process for our network. In the first stage, the proposed network is trained with the conventional supervised learning technique, whereas, in the second stage, the training process of the network is carried out by the adversarial learning technique. Finally, in the third stage, the training of the network obtained by the conventional supervised learning is continued by the guidance of the one trained by the adversarial learning technique. In the development of the adversarial learning-based stage of our network, we propose a novel multi-discriminator generative adversarial network, which is able to produce images with more realistic textures and structures. The proposed multi-discriminator generative adversarial network employs the discrimination process between the real and fake data in various underwater environment color spaces. The results of different experimentations show the effectiveness of the proposed scheme in restoring the high-quality images compared to the other state-of-the-art deep underwater image enhancement networks.
Non-linearities and unmodeled dynamics in the control system inevitably degrade the quality and reliability of voltage stabilization performance in DC-DC buck converters. Reinforcement learning (RL) is an emerging met...
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Non-linearities and unmodeled dynamics in the control system inevitably degrade the quality and reliability of voltage stabilization performance in DC-DC buck converters. Reinforcement learning (RL) is an emerging method to mitigate this issue. However, traditional RL typically necessitates significant computational resources and specialized processing units, thus being an economically unreasonable option. This paper proposes a high-performance RL-based method even suitable for a cost-effective Digital Signal Processor (DSP). To address the significant challenge of time delay in a DSP when training the RL agent, this paper adopts a real-timedeep Reinforcement learning (RTDRL) approach that creates an augmented virtual decision process to eliminate the delay effect. The performance is validated through software simulation (PLECS) and an actual system, through which the proposed approach demonstrated superior performance compared to existing benchmarks, including existing approaches and artificial intelligence.
Traditional infrared image super-resolution (SR) methods often fall short in real -world scenarios, particularly when dealing with images degraded by various forms of noise and artifacts. Addressing this gap, this pap...
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Traditional infrared image super-resolution (SR) methods often fall short in real -world scenarios, particularly when dealing with images degraded by various forms of noise and artifacts. Addressing this gap, this paper presents SwinIBSR, a blind SR approach optimized for real -world infrared imaging conditions. SwinIBSR introduces a practical degradation model, specifically designed to simulate the complex degradation processes encountered in real -world infrared imaging. Additionally, a mixed training strategy using both infrared and visible light datasets greatly enhances the network's generalization capabilities, leading to the production of high-quality SR images. Building upon the Transformer-based architecture of SwinIR, SwinIBSR is adept at learning intricate mappings from low-resolution to high-resolution images. Our comprehensive experiments validate the effectiveness of SwinIBSR, showcasing its outstanding performance in processingreal -world infrared images and its notable superiority over existing methods regarding visual quality. This work contributes to the field of infrared image SR, offering insights in enhancing SR techniques for practical applications.
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