2022
DOI: 10.1155/2022/3265366
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Detection and Prediction of HMS from Drinking Water by Analysing the Adsorbents from Residuals Using Deep Learning

Abstract: Contamination HM is an important issue associated with the environment, and it requires suitable steps for the reduction of HMs in water at an acceptable ratio. With modern technologies, this could be possible by enabling the carbon adsorbents to adsorb the pollutions via deep learning strategies. In this paper, we develop a model on detection and prediction of presence of HMs from drinking water by analysing the adsorbents from residuals using deep learning. The study uses dense neural networks or DenseNets t… Show more

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Cited by 18 publications
(2 citation statements)
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“…Different splicing results will appear due to different room splicing. In order to avoid design logic errors and to learn confusion, it is necessary to customize an evaluation system as shown in Table 2, before deep learning [16][17][18][19][20]. The specific room usage is formulated according to the design task book, the connection relationship between the rooms in the building follows the principles of interior design and basic common sense, such as the connection between the office and the corridor, and the connection between the coffee shop and the corridor, which is used to judge the design logic of the identification result of the office space.…”
Section: Design Generation Processmentioning
confidence: 99%
“…Different splicing results will appear due to different room splicing. In order to avoid design logic errors and to learn confusion, it is necessary to customize an evaluation system as shown in Table 2, before deep learning [16][17][18][19][20]. The specific room usage is formulated according to the design task book, the connection relationship between the rooms in the building follows the principles of interior design and basic common sense, such as the connection between the office and the corridor, and the connection between the coffee shop and the corridor, which is used to judge the design logic of the identification result of the office space.…”
Section: Design Generation Processmentioning
confidence: 99%
“…Dalal et al [17] devised a human pose descriptor utilizing the Histogram of Oriented Gradients (HoG) to identify actions in dynamic environmental settings. This method combines gradient features with a differential optical flow motion descriptor to represent human activities in realistic cinematic scenarios, yielding promising results across various challenging conditions [39][40].…”
Section: Fig 2 Different Kind Of Vision Based Human Activity Recognit...mentioning
confidence: 99%