Segment-then-Segment: Context-Preserving Crop-Based Segmentation for Large Biomedical Images.
Marin BenčevićYuming QiuIrena GalićAleksandra PižuricaPublished in: Sensors (Basel, Switzerland) (2023)
Medical images are often of huge size, which presents a challenge in terms of memory requirements when training machine learning models. Commonly, the images are downsampled to overcome this challenge, but this leads to a loss of information. We present a general approach for training semantic segmentation neural networks on much smaller input sizes called Segment-then-Segment. To reduce the input size, we use image crops instead of downscaling. One neural network performs the initial segmentation on a downscaled image. This segmentation is then used to take the most salient crops of the full-resolution image with the surrounding context. Each crop is segmented using a second specially trained neural network. The segmentation masks of each crop are joined to form the final output image. We evaluate our approach on multiple medical image modalities (microscopy, colonoscopy, and CT) and show that this approach greatly improves segmentation performance with small network input sizes when compared to baseline models trained on downscaled images, especially in terms of pixel-wise recall.
Keyphrases
- deep learning
- neural network
- convolutional neural network
- machine learning
- artificial intelligence
- climate change
- healthcare
- computed tomography
- single molecule
- resistance training
- high resolution
- magnetic resonance
- social media
- health information
- contrast enhanced
- positron emission tomography
- high throughput
- single cell
- high speed
- colorectal cancer screening
- pet ct