S$^3$R: Self-supervised Spectral Regression for Hyperspectral
Histopathology Image Classification
- URL: http://arxiv.org/abs/2209.08770v1
- Date: Mon, 19 Sep 2022 05:47:11 GMT
- Title: S$^3$R: Self-supervised Spectral Regression for Hyperspectral
Histopathology Image Classification
- Authors: Xingran Xie, Yan Wang, and Qingli Li
- Abstract summary: We introduce an efficient and effective Self-supervised Spectral Regression (S$3$R) method, which exploits the low rank characteristic in the spectral domain of hyperspectral images (HSI)
Two pre-text tasks are designed: (1)S$3$R-CR, which regresses the linear coefficients, so that the pre-trained model understands the inherent structures of HSIs and the pathological characteristics of different morphologies; (2)S$3$R-BR, which regresses the missing band, making the model to learn the holistic semantics of HSIs.
- Score: 13.388372624497807
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Benefited from the rich and detailed spectral information in hyperspectral
images (HSI), HSI offers great potential for a wide variety of medical
applications such as computational pathology. But, the lack of adequate
annotated data and the high spatiospectral dimensions of HSIs usually make
classification networks prone to overfit. Thus, learning a general
representation which can be transferred to the downstream tasks is imperative.
To our knowledge, no appropriate self-supervised pre-training method has been
designed for histopathology HSIs. In this paper, we introduce an efficient and
effective Self-supervised Spectral Regression (S$^3$R) method, which exploits
the low rank characteristic in the spectral domain of HSI. More concretely, we
propose to learn a set of linear coefficients that can be used to represent one
band by the remaining bands via masking out these bands. Then, the band is
restored by using the learned coefficients to reweight the remaining bands. Two
pre-text tasks are designed: (1)S$^3$R-CR, which regresses the linear
coefficients, so that the pre-trained model understands the inherent structures
of HSIs and the pathological characteristics of different morphologies;
(2)S$^3$R-BR, which regresses the missing band, making the model to learn the
holistic semantics of HSIs. Compared to prior arts i.e., contrastive learning
methods, which focuses on natural images, S$^3$R converges at least 3 times
faster, and achieves significant improvements up to 14% in accuracy when
transferring to HSI classification tasks.
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