2020
DOI: 10.12928/telkomnika.v18i3.14890
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An improvement of Gram-negative bacteria identification using convolutional neural network with fine tuning

Abstract: This paper proposes an image processing approach to identify Gram-negative bacteria. Gram-negative bacteria are one of the bacteria that cause lung lobe damage-bacterial samples obtained through smears of the patient's sputum. The first step bacterium should pass the pathogen test process. After that, it bred using Mc Conkey's media. The problem faced is that the process of identifying bacterial objects is still done manually under a fluorescence microscope. The contributions offered from this research are foc… Show more

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Cited by 8 publications
(3 citation statements)
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“…It is not surprising then that identification or classification of individuals or species from image, video, and sound data is the most common use of deep learning in the field (Figure 3). These efforts already span many taxa, from bacteria (Satoto et al, 2020), through protozoans (Hsiang et al, 2019), plants (Unger et al, 2016;Carranza-Rojas et al, 2017;Schuettpelz et al, 2017;Younis et al, 2018) to insects (Marques et al, 2018;Boer and Vos, 2018;Valan et al, 2019;Hansen et al, 2020) and vertebrates (Villon et al, 2018;Norouzzadeh et al, 2018), both extant and fossil (Liu and Song, 2020;Miele et al, 2020;de Lima et al, 2020) and at scales ranging from local to global. Intensifying efforts to digitize natural history collections provide troves of image data that can be used for this purpose (Smith and Blagoderov, 2012).…”
Section: Automated Species Identificationmentioning
confidence: 99%
“…It is not surprising then that identification or classification of individuals or species from image, video, and sound data is the most common use of deep learning in the field (Figure 3). These efforts already span many taxa, from bacteria (Satoto et al, 2020), through protozoans (Hsiang et al, 2019), plants (Unger et al, 2016;Carranza-Rojas et al, 2017;Schuettpelz et al, 2017;Younis et al, 2018) to insects (Marques et al, 2018;Boer and Vos, 2018;Valan et al, 2019;Hansen et al, 2020) and vertebrates (Villon et al, 2018;Norouzzadeh et al, 2018), both extant and fossil (Liu and Song, 2020;Miele et al, 2020;de Lima et al, 2020) and at scales ranging from local to global. Intensifying efforts to digitize natural history collections provide troves of image data that can be used for this purpose (Smith and Blagoderov, 2012).…”
Section: Automated Species Identificationmentioning
confidence: 99%
“…Dropout reduces the loss value during the training process, also helps prevent overfitting [24]. The normalization layer normalized values come from the hidden layer.…”
Section: Transformer Modelmentioning
confidence: 99%
“…The amount of convolution and pooling layer depends on the complexity of the case. The convolution layer consists of several groups of features and the pooling layer consists of a reduction or summary of several groups of features[25][26][27][28][29][30][31][32][33][34][35][36][37][38][39][40][41]. Here are the detailed steps of deep learning with PSO: a.…”
mentioning
confidence: 99%