CFPNet-M: A Light-Weight Encoder-Decoder Based Network for Multimodal
Biomedical Image Real-Time Segmentation
- URL: http://arxiv.org/abs/2105.04075v1
- Date: Mon, 10 May 2021 02:29:11 GMT
- Title: CFPNet-M: A Light-Weight Encoder-Decoder Based Network for Multimodal
Biomedical Image Real-Time Segmentation
- Authors: Ange Lou, Shuyue Guan and Murray Loew
- Abstract summary: We developed a novel light-weight architecture -- Channel-wise Feature Pyramid Network for Medicine.
It achieves comparable segmentation results on all five medical datasets with only 0.65 million parameters, which is about 2% of U-Net, and 8.8 MB memory.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Currently, developments of deep learning techniques are providing
instrumental to identify, classify, and quantify patterns in medical images.
Segmentation is one of the important applications in medical image analysis. In
this regard, U-Net is the predominant approach to medical image segmentation
tasks. However, we found that those U-Net based models have limitations in
several aspects, for example, millions of parameters in the U-Net consuming
considerable computation resource and memory, lack of global information, and
missing some tough objects. Therefore, we applied two modifications to improve
the U-Net model: 1) designed and added the dilated channel-wise CNN module, 2)
simplified the U shape network. Based on these two modifications, we proposed a
novel light-weight architecture -- Channel-wise Feature Pyramid Network for
Medicine (CFPNet-M). To evaluate our method, we selected five datasets with
different modalities: thermography, electron microscopy, endoscopy, dermoscopy,
and digital retinal images. And we compared its performance with several models
having different parameter scales. This paper also involves our previous
studies of DC-UNet and some commonly used light-weight neural networks. We
applied the Tanimoto similarity instead of the Jaccard index for gray-level
image measurements. By comparison, CFPNet-M achieves comparable segmentation
results on all five medical datasets with only 0.65 million parameters, which
is about 2% of U-Net, and 8.8 MB memory. Meanwhile, the inference speed can
reach 80 FPS on a single RTX 2070Ti GPU with the 256 by 192 pixels input size.
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