2019
DOI: 10.3390/math7121170
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Enhancement of Deep Learning in Image Classification Performance Using Xception with the Swish Activation Function for Colorectal Polyp Preliminary Screening

Abstract: One of the leading forms of cancer is colorectal cancer (CRC), which is responsible for increasing mortality in young people. The aim of this paper is to provide an experimental modification of deep learning of Xception with Swish and assess the possibility of developing a preliminary colorectal polyp screening system by training the proposed model with a colorectal topogram dataset in two and three classes. The results indicate that the proposed model can enhance the original convolutional neural network mode… Show more

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Cited by 43 publications
(24 citation statements)
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“…It is a deep learning image classifier using depthwise separable convolution layers with residual connections, which has been pre-trained on large scale images [ 26 ]. After input, data using only pointwise convolution (1 × 1 convolution) create separate convolution sizes of 3 × 3 without average pooling, which proceeds in nonoverlapping sections of the output channels to then be fed-forward for concatenation [ 26 , 27 ]. The model demonstrates a strong ability to generalize to images outside the original dataset via transfer learning, such as feature extraction and fine-tuning.…”
Section: Processing Methodsmentioning
confidence: 99%
See 1 more Smart Citation
“…It is a deep learning image classifier using depthwise separable convolution layers with residual connections, which has been pre-trained on large scale images [ 26 ]. After input, data using only pointwise convolution (1 × 1 convolution) create separate convolution sizes of 3 × 3 without average pooling, which proceeds in nonoverlapping sections of the output channels to then be fed-forward for concatenation [ 26 , 27 ]. The model demonstrates a strong ability to generalize to images outside the original dataset via transfer learning, such as feature extraction and fine-tuning.…”
Section: Processing Methodsmentioning
confidence: 99%
“…So, synergistic features from multi-channel sEMG are considered to recognize different words. Xception, originally designed for image classification [ 26 , 27 , 28 , 29 ], is utilized to process spectrograms of multichannel sEMG to explore the spatial correlation.…”
Section: Introductionmentioning
confidence: 99%
“…Xception [11] is meant to be a hypothesis reliant Inception module used in developing correlations of crosschannel as well as spatial relations inside feature maps of CNN that is capable of isolating the model. The typical Inception module from Inception v3, a module which has employed cross-channel relations by isolating the input data in 4 phases for convolution size of 1 x 1, average pooling, maps correlations of convolution size 3 x 3 and send them for combination.…”
Section: Dlxm Based Feature Extractionmentioning
confidence: 99%
“…Swish is superior in terms of expressive power and fast convergence. It has been applied in diverse deep learning applications and proved to be more effective than ReLU and other activation functions (Tripathi et al, 2019;Jinsakul et al, 2019;Wang et al, 2019).…”
Section: Predefined Activation Functionsmentioning
confidence: 99%