CVJan 23, 2021

Network-Agnostic Knowledge Transfer for Medical Image Segmentation

arXiv:2101.09560v1
Originality Incremental advance
AI Analysis

This enables more flexible and data-efficient knowledge transfer in medical imaging, though it is incremental as it builds on existing distillation methods.

The paper tackles the problem of transferring knowledge between neural networks for medical image segmentation without requiring similar architectures or access to original training data, by using a teacher to annotate an independent dataset for student training. The student model achieved similar performance to a single teacher and outperformed multiple teachers when combined, with experiments across five networks and seven datasets.

Conventional transfer learning leverages weights of pre-trained networks, but mandates the need for similar neural architectures. Alternatively, knowledge distillation can transfer knowledge between heterogeneous networks but often requires access to the original training data or additional generative networks. Knowledge transfer between networks can be improved by being agnostic to the choice of network architecture and reducing the dependence on original training data. We propose a knowledge transfer approach from a teacher to a student network wherein we train the student on an independent transferal dataset, whose annotations are generated by the teacher. Experiments were conducted on five state-of-the-art networks for semantic segmentation and seven datasets across three imaging modalities. We studied knowledge transfer from a single teacher, combination of knowledge transfer and fine-tuning, and knowledge transfer from multiple teachers. The student model with a single teacher achieved similar performance as the teacher; and the student model with multiple teachers achieved better performance than the teachers. The salient features of our algorithm include: 1)no need for original training data or generative networks, 2) knowledge transfer between different architectures, 3) ease of implementation for downstream tasks by using the downstream task dataset as the transferal dataset, 4) knowledge transfer of an ensemble of models, trained independently, into one student model. Extensive experiments demonstrate that the proposed algorithm is effective for knowledge transfer and easily tunable.

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