Enhanced Fetal Development Assessment via Contour Detection and CRL Estimation

Natarajan Sriraam, Babu Chinta, Seshadhri Suresh, Suresh Sudharshan

2024 IEEE 3rd International Conference on Control, Instrumentation, Energy & Communication (CIEC)(2024)

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Abstract
Accurate fetal growth evaluation is critical for monitoring pregnancy health and delivering appropriate prenatal treatment. We provide a unique strategy for improving the precision of fetal growth assessment by merging sophisticated contour recognition algorithms with Crown-Rump Length (CRL) estimate in this work. We establish a more complete and reliable approach of measuring fetal growth and development by integrating cutting-edge computer vision and deep learning methods. Our technique uses powerful image processing methods to determine the shape of the fetal anatomy in ultrasound images, overcoming hurdles such as noise, artifacts, and fetal positional fluctuations. Following contour identification, exact CRL length estimate is performed, which is a critical predictor of gestational age and fetal well-being. The combination of these two components considerably improves accuracy of fetal growth assessment.
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Key words
Fetal,Segmentation,Res-UNet,Ultrasound Image
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