Patch-based medical image segmentation using Quantum Tensor Networks
- URL: http://arxiv.org/abs/2109.07138v1
- Date: Wed, 15 Sep 2021 07:54:05 GMT
- Title: Patch-based medical image segmentation using Quantum Tensor Networks
- Authors: Raghavendra Selvan, Erik B Dam, S{\o}ren Alexander Flensborg, Jens
Petersen
- Abstract summary: We formulate image segmentation in a supervised setting with tensor networks.
The key idea is to first lift the pixels in image patches to exponentially high dimensional feature spaces.
The performance of the proposed model is evaluated on three 2D- and one 3D- biomedical imaging datasets.
- Score: 1.5899411215927988
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Tensor networks are efficient factorisations of high dimensional tensors into
a network of lower order tensors. They have been most commonly used to model
entanglement in quantum many-body systems and more recently are witnessing
increased applications in supervised machine learning. In this work, we
formulate image segmentation in a supervised setting with tensor networks. The
key idea is to first lift the pixels in image patches to exponentially high
dimensional feature spaces and using a linear decision hyper-plane to classify
the input pixels into foreground and background classes. The high dimensional
linear model itself is approximated using the matrix product state (MPS) tensor
network. The MPS is weight-shared between the non-overlapping image patches
resulting in our strided tensor network model. The performance of the proposed
model is evaluated on three 2D- and one 3D- biomedical imaging datasets. The
performance of the proposed tensor network segmentation model is compared with
relevant baseline methods. In the 2D experiments, the tensor network model
yeilds competitive performance compared to the baseline methods while being
more resource efficient.
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