consumer electronic
GNN-enhanced Traffic Anomaly Detection for Next-Generation SDN-Enabled Consumer Electronics
Yang, Guan-Yan, Wang, Farn, Yeh, Kuo-Hui
HE rapid expansion of the Internet of Things (IoT) has seamlessly integrated consumer electronics (CE) devices--such as smartphones, smartwatches, and laptops--into our daily lives, enabling remote access and connectivity across diverse sectors like e-healthcare, smart cities, and intelligent transportation [1]. The CE market is projected to reach 2.873 billion users by 2025, driven by the capacity of nearly every device to generate and share data [2], [3]. CE networks, composed of heterogeneous devices from various manufacturers, present unique challenges due to large-scale deployment, high device diversity, and limited computational resources [1], [4]. Unlike traditional IT networks, CE devices such as smart home appliances and wearables require lightweight, secure, and low-latency communication [5]. Their traffic is often encrypted, intermittent, and follows irregular patterns, complicating the task of network anomaly detection (NAD) [6]. Security breaches in CE can have severe consequences, including privacy invasion, financial loss, and physical safety risks, and compromised devices can be conscripted into botnets for large-scale attacks like DDoS campaigns [7]-[9]. While existing machine learning (ML) and deep learning (DL) methods for NAD have shown promise, they often suffer from time-consuming feature extraction processes and require extensive manual configuration, making them ill-suited for the dynamic nature of CE networks [10]. To overcome these limitations, advanced architectures like Compute First Networking (CFN) and Software-Defined Networking (SDN) are gaining traction.
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- Asia > China (0.04)
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CURA: Size Isnt All You Need -- A Compact Universal Architecture for On-Device Intelligence
Seo, Jae-Bum, Salman, Muhammad, Caceres-Najarro, Lismer Andres
Existing on-device AI architectures for resource-constrained environments face two critical limitations: they lack compactness, with parameter requirements scaling proportionally to task complexity, and they exhibit poor generalizability, performing effectively only on specific application domains (e.g., models designed for regression tasks cannot adapt to natural language processing (NLP) applications). In this paper, we propose CURA, an architecture inspired by analog audio signal processing circuits that provides a compact and lightweight solution for diverse machine learning tasks across multiple domains. Our architecture offers three key advantages over existing approaches: (1) Compactness: it requires significantly fewer parameters regardless of task complexity; (2) Generalizability: it adapts seamlessly across regression, classification, complex NLP, and computer vision tasks; and (3) Complex pattern recognition: it can capture intricate data patterns while maintaining extremely low model complexity. We evaluated CURA across diverse datasets and domains. For compactness, it achieved equivalent accuracy using up to 2,500 times fewer parameters compared to baseline models. For generalizability, it demonstrated consistent performance across four NLP benchmarks and one computer vision dataset, nearly matching specialized existing models (achieving F1-scores up to 90%). Lastly, it delivers superior forecasting accuracy for complex patterns, achieving 1.6 times lower mean absolute error and 2.1 times lower mean squared error than competing models.
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- Overview (0.66)
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- Banking & Finance > Trading (1.00)
EcoWeedNet: A Lightweight and Automated Weed Detection Method for Sustainable Next-Generation Agricultural Consumer Electronics
Khater, Omar H., Siddiqui, Abdul Jabbar, Hossain, M. Shamim
Sustainable agriculture plays a crucial role in ensuring world food security for consumers. A critical challenge faced by sustainable precision agriculture is weed growth, as weeds share essential resources with the crops, such as water, soil nutrients, and sunlight, which notably affect crop yields. The traditional methods employed to combat weeds include the usage of chemical herbicides and manual weed removal methods. However, these could damage the environment and pose health hazards. The adoption of automated computer vision technologies and ground agricultural consumer electronic vehicles in precision agriculture offers sustainable, low-carbon solutions. However, prior works suffer from issues such as low accuracy and precision and high computational expense. This work proposes EcoWeedNet, a novel model with enhanced weed detection performance without adding significant computational complexity, aligning with the goals of low-carbon agricultural practices. Additionally, our model is lightweight and optimal for deployment on ground-based consumer electronic agricultural vehicles and robots. The effectiveness of the proposed model is demonstrated through comprehensive experiments on the CottonWeedDet12 benchmark dataset reflecting real-world scenarios. EcoWeedNet achieves performance close to that of large models yet with much fewer parameters. (approximately 4.21% of the parameters and 6.59% of the GFLOPs of YOLOv4). This work contributes effectively to the development of automated weed detection methods for next-generation agricultural consumer electronics featuring lower energy consumption and lower carbon footprint. This work paves the way forward for sustainable agricultural consumer technologies.
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- Oceania > Australia (0.04)
- North America > United States (0.04)
- Asia > Middle East > Saudi Arabia > Riyadh Province > Riyadh (0.04)
A Global Medical Data Security and Privacy Preserving Standards Identification Framework for Electronic Healthcare Consumers
Mishra, Vinaytosh, Gupta, Kishu, Saxena, Deepika, Singh, Ashutosh Kumar
Electronic Health Records (EHR) are crucial for the success of digital healthcare, with a focus on putting consumers at the center of this transformation. However, the digitalization of healthcare records brings along security and privacy risks for personal data. The major concern is that different countries have varying standards for the security and privacy of medical data. This paper proposed a novel and comprehensive framework to standardize these rules globally, bringing them together on a common platform. To support this proposal, the study reviews existing literature to understand the research interest in this issue. It also examines six key laws and standards related to security and privacy, identifying twenty concepts. The proposed framework utilized K-means clustering to categorize these concepts and identify five key factors. Finally, an Ordinal Priority Approach is applied to determine the preferred implementation of these factors in the context of EHRs. The proposed study provides a descriptive then prescriptive framework for the implementation of privacy and security in the context of electronic health records. Therefore, the findings of the proposed framework are useful for professionals and policymakers in improving the security and privacy associated with EHRs.
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Quantum Machine Learning for Anomaly Detection in Consumer Electronics
Bhowmik, Sounak, Thapliyal, Himanshu
Anomaly detection is a crucial task in cyber security. Technological advancement brings new cyber-physical threats like network intrusion, financial fraud, identity theft, and property invasion. In the rapidly changing world, with frequently emerging new types of anomalies, classical machine learning models are insufficient to prevent all the threats. Quantum Machine Learning (QML) is emerging as a powerful computational tool that can detect anomalies more efficiently. In this work, we have introduced QML and its applications for anomaly detection in consumer electronics. We have shown a generic framework for applying QML algorithms in anomaly detection tasks. We have also briefly discussed popular supervised, unsupervised, and reinforcement learning-based QML algorithms and included five case studies of recent works to show their applications in anomaly detection in the consumer electronics field.
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- Research Report (0.50)
- Workflow (0.47)
DefectTwin: When LLM Meets Digital Twin for Railway Defect Inspection
Ferdousi, Rahatara, Hossain, M. Anwar, Yang, Chunsheng, Saddik, Abdulmotaleb El
A Digital Twin (DT) replicates objects, processes, or systems for real-time monitoring, simulation, and predictive maintenance. Recent advancements like Large Language Models (LLMs) have revolutionized traditional AI systems and offer immense potential when combined with DT in industrial applications such as railway defect inspection. Traditionally, this inspection requires extensive defect samples to identify patterns, but limited samples can lead to overfitting and poor performance on unseen defects. Integrating pre-trained LLMs into DT addresses this challenge by reducing the need for vast sample data. We introduce DefectTwin, which employs a multimodal and multi-model (M^2) LLM-based AI pipeline to analyze both seen and unseen visual defects in railways. This application enables a railway agent to perform expert-level defect analysis using consumer electronics (e.g., tablets). A multimodal processor ensures responses are in a consumable format, while an instant user feedback mechanism (instaUF) enhances Quality-of-Experience (QoE). The proposed M^2 LLM outperforms existing models, achieving high precision (0.76-0.93) across multimodal inputs including text, images, and videos of pre-trained defects, and demonstrates superior zero-shot generalizability for unseen defects. We also evaluate the latency, token count, and usefulness of responses generated by DefectTwin on consumer devices. To our knowledge, DefectTwin is the first LLM-integrated DT designed for railway defect inspection.
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- Asia > China > Guangdong Province > Guangzhou (0.04)
- North America > Canada > Ontario > Kingston (0.04)
Disambiguate Entity Matching using Large Language Models through Relation Discovery
Entity matching is a critical challenge in data integration and cleaning, central to tasks like fuzzy joins and deduplication. Traditional approaches have focused on overcoming fuzzy term representations through methods such as edit distance, Jaccard similarity, and more recently, embeddings and deep neural networks, including advancements from large language models (LLMs) like GPT. However, the core challenge in entity matching extends beyond term fuzziness to the ambiguity in defining what constitutes a "match," especially when integrating with external databases. This ambiguity arises due to varying levels of detail and granularity among entities, complicating exact matches. We propose a novel approach that shifts focus from purely identifying semantic similarities to understanding and defining the "relations" between entities as crucial for resolving ambiguities in matching. By predefining a set of relations relevant to the task at hand, our method allows analysts to navigate the spectrum of similarity more effectively, from exact matches to conceptually related entities.
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- North America > United States > New York > New York County > New York City (0.04)
Bringing Robots Home: The Rise of AI Robots in Consumer Electronics
Dong, Haiwei, Liu, Yang, Chu, Ted, Saddik, Abdulmotaleb El
On March 18, 2024, NVIDIA unveiled Project GR00T, a general-purpose multimodal generative AI model designed specifically for training humanoid robots. Preceding this event, Tesla's unveiling of the Optimus Gen 2 humanoid robot on December 12, 2023, underscored the profound impact robotics is poised to have on reshaping various facets of our daily lives. While robots have long dominated industrial settings, their presence within our homes is a burgeoning phenomenon. This can be attributed, in part, to the complexities of domestic environments and the challenges of creating robots that can seamlessly integrate into our daily routines.
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Microsoft Emerges as the Winner in OpenAI Chaos
Just after 2am Pacific Time on Monday morning, several OpenAI staffers, including its chief technology officer Mira Murati, posted in unison on X "OpenAI is nothing without its people." Sam Altman, who was dramatically removed as the company's chief executive on Friday, reposted many of them. By then, Altman already had a new job. Satya Nadella, CEO of Microsoft, a major investor and partner of OpenAI, announced late on Sunday night that Altman and his cofounder Greg Brockman would be joining the tech giant to head a new "advanced AI research team." Nadella's statement seemed to suggest that others from the startup would be joining Microsoft.
- Information Technology > Artificial Intelligence > Natural Language > Large Language Model (1.00)
- Information Technology > Artificial Intelligence > Natural Language > Chatbot (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks > Deep Learning > Generative AI (1.00)
SimplyMime: A Control at Our Fingertips
Sethuraman, Sibi Chakkaravarthy, Tadkapally, Gaurav Reddy, Kiran, Athresh, Mohanty, Saraju P., Subramanian, Anitha
The utilization of consumer electronics, such as televisions, set-top boxes, home theaters, and air conditioners, has become increasingly prevalent in modern society as technology continues to evolve. As new devices enter our homes each year, the accumulation of multiple infrared remote controls to operate them not only results in a waste of energy and resources, but also creates a cumbersome and cluttered environment for the user. This paper presents a novel system, named SimplyMime, which aims to eliminate the need for multiple remote controls for consumer electronics and provide the user with intuitive control without the need for additional devices. SimplyMime leverages a dynamic hand gesture recognition architecture, incorporating Artificial Intelligence and Human-Computer Interaction, to create a sophisticated system that enables users to interact with a vast majority of consumer electronics with ease. Additionally, SimplyMime has a security aspect where it can verify and authenticate the user utilising the palmprint, which ensures that only authorized users can control the devices. The performance of the proposed method for detecting and recognizing gestures in a stream of motion was thoroughly tested and validated using multiple benchmark datasets, resulting in commendable accuracy levels. One of the distinct advantages of the proposed method is its minimal computational power requirements, making it highly adaptable and reliable in a wide range of circumstances. The paper proposes incorporating this technology into all consumer electronic devices that currently require a secondary remote for operation, thus promoting a more efficient and sustainable living environment.
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- Semiconductors & Electronics (1.00)
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- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks > Deep Learning (0.68)
- Information Technology > Artificial Intelligence > Vision > Gesture Recognition (0.64)
- Information Technology > Artificial Intelligence > Machine Learning > Performance Analysis > Accuracy (0.46)