Deep Learning with Cinematic Rendering: Fine-Tuning Deep Neural Networks Using Photorealistic Medical Images
Faisal Mahmood, Richard Chen, Sandra Sudarsky, Daphne Yu, Nicholas J., Durr

TL;DR
This paper explores the use of cinematic rendering to generate photorealistic medical images for fine-tuning deep neural networks, improving their generalization and performance in depth estimation tasks on real endoscopy data.
Contribution
It introduces a novel application of cinematic rendering for fine-tuning synthetic data-driven networks to enhance medical image analysis.
Findings
Fine-tuned networks adapt better to real images.
Reduced training data needed for convergence.
Improved generalization with varied rendering conditions.
Abstract
Deep learning has emerged as a powerful artificial intelligence tool to interpret medical images for a growing variety of applications. However, the paucity of medical imaging data with high-quality annotations that is necessary for training such methods ultimately limits their performance. Medical data is challenging to acquire due to privacy issues, shortage of experts available for annotation, limited representation of rare conditions and cost. This problem has previously been addressed by using synthetically generated data. However, networks trained on synthetic data often fail to generalize to real data. Cinematic rendering simulates the propagation and interaction of light passing through tissue models reconstructed from CT data, enabling the generation of photorealistic images. In this paper, we present one of the first applications of cinematic rendering in deep learning, in…
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