In the realm of retail, particularly in supermarkets and hypermarkets, monitoring, product management, and stocking traditionally rely on human effort and manual labor. However, this approach often proves to be time-c...
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For many years, researchers in the field of natural language processing have been exploring sentiment analysis, a method for understanding human feelings and thoughts expressed in text. Sentiment analysis works by fir...
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Solar energy is increasingly recognised as an essential part of the global mission for the net zero goal, owing to its renewable nature and cost-effectiveness. In response to escalating power demands, private power op...
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The current biomedical literature is huge, unstructured, and complex, posing a significant challenge to efficient information processing and consequently creating a substantial gap between medical research and clinica...
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作者:
Hind, DanielHarvey, CarloDMTLab
School of Computing and Digital Technology Faculty of Computing Engineering and the Built Environment Birmingham City University Curzon Street West Midlands BirminghamB4 7XG United Kingdom
This paper presents a novel exploration of the use of an evolving neural network approach to generate dynamic content for video games, specifically for a tower defence game. The objective is to employ the NeuroEvoluti...
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Recently,the autoencoder(AE)based method plays a critical role in the hyperspectral anomaly detection ***,due to the strong generalised capacity of AE,the abnormal samples are usually reconstructed well along with the...
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Recently,the autoencoder(AE)based method plays a critical role in the hyperspectral anomaly detection ***,due to the strong generalised capacity of AE,the abnormal samples are usually reconstructed well along with the normal background ***,in order to separate anomalies from the background by calculating reconstruction errors,it can be greatly beneficial to reduce the AE capability for abnormal sample reconstruction while maintaining the background reconstruction performance.A memory‐augmented autoencoder for hyperspectral anomaly detection(MAENet)is proposed to address this challenging ***,the proposed MAENet mainly consists of an encoder,a memory module,and a ***,the encoder transforms the original hyperspectral data into the low‐dimensional latent ***,the latent representation is utilised to retrieve the most relevant matrix items in the memory matrix,and the retrieved matrix items will be used to replace the latent representation from the ***,the decoder is used to reconstruct the input hyperspectral data using the retrieved memory *** this strategy,the background can still be reconstructed well while the abnormal samples *** conducted on five real hyperspectral anomaly data sets demonstrate the superiority of the proposed method.
Accurate estimation of gas condensate fluid properties is a challenging task due to the evolving condensate liquid from the gas phase below the saturation pressure. Among the fluid properties, viscosity of condensate ...
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This paper presents a groundbreaking real-time system that transforms British Sign Language (BSL) gestures into audible speech using long short-term memory (LSTM), employing innovative machine learning techniques. The...
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This paper addresses security vulnerabilities in Unstructured Supplementary Service Data (USSD) based peer-to-peer (P2P) transactions, which often expose users to social engineering attacks and shoulder surfing due to...
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This study enhances microservices architecture optimization by introducing a novel approach that increases scalability and reduces complexity, particularly for billing systems. Through the implementation of a refined ...
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