Breast Cancer Histopathological Image Classification Using Stochastic Dilated Residual Ghost Model

  • Kashyap R
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Abstract

A new deep learning-based classification model called the Stochastic Dilated Residual Ghost (SDRG) was proposed in this work for categorizing histopathology images of breast cancer. The SDRG model used the proposed Multiscale Stochastic Dilated Convolution (MSDC) model, a ghost unit, stochastic upsampling, and downsampling units to categorize breast cancer accurately. This study addresses four primary issues: first, strain normalization was used to manage color divergence, data augmentation with several factors was used to handle the overfitting. The second challenge is extracting and enhancing tiny and low-level information such as edge, contour, and color accuracy; it is done by the proposed multiscale stochastic and dilation unit. The third contribution is to remove redundant or similar information from the convolution neural network using a ghost unit. According to the assessment findings, the SDRG model scored overall 95.65 percent accuracy rates in categorizing images with a precision of 99.17 percent, superior to state-of-the-art approaches.

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APA

Kashyap, R. (2021). Breast Cancer Histopathological Image Classification Using Stochastic Dilated Residual Ghost Model. International Journal of Information Retrieval Research, 12(1), 1–24. https://doi.org/10.4018/ijirr.289655

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