TasksSotADatasetsPapersMethodsSubmitAbout
Papers With Code 2

A community resource for machine learning research: papers, code, benchmarks, and state-of-the-art results.

Explore

Notable BenchmarksAll SotADatasetsPapersMethods

Community

Submit ResultsAbout

Data sourced from the PWC Archive (CC-BY-SA 4.0). Built by the community, for the community.

Papers/Dense Steerable Filter CNNs for Exploiting Rotational Symm...

Dense Steerable Filter CNNs for Exploiting Rotational Symmetry in Histology Images

Simon Graham, David Epstein, Nasir Rajpoot

2020-04-06Multi-tissue Nucleus SegmentationColorectal Gland Segmentation:Nuclear SegmentationTumour ClassificationBreast Tumour Classification
PaperPDFCodeCode(official)

Abstract

Histology images are inherently symmetric under rotation, where each orientation is equally as likely to appear. However, this rotational symmetry is not widely utilised as prior knowledge in modern Convolutional Neural Networks (CNNs), resulting in data hungry models that learn independent features at each orientation. Allowing CNNs to be rotation-equivariant removes the necessity to learn this set of transformations from the data and instead frees up model capacity, allowing more discriminative features to be learned. This reduction in the number of required parameters also reduces the risk of overfitting. In this paper, we propose Dense Steerable Filter CNNs (DSF-CNNs) that use group convolutions with multiple rotated copies of each filter in a densely connected framework. Each filter is defined as a linear combination of steerable basis filters, enabling exact rotation and decreasing the number of trainable parameters compared to standard filters. We also provide the first in-depth comparison of different rotation-equivariant CNNs for histology image analysis and demonstrate the advantage of encoding rotational symmetry into modern architectures. We show that DSF-CNNs achieve state-of-the-art performance, with significantly fewer parameters, when applied to three different tasks in the area of computational pathology: breast tumour classification, colon gland segmentation and multi-tissue nuclear segmentation.

Results

TaskDatasetMetricValueModel
Breast Tumour ClassificationPCamAUC0.975DSF-CNN (C8)
Colorectal Gland Segmentation:CRAGDice0.891DSF-CNN (C8)
Colorectal Gland Segmentation:CRAGF1-score0.874DSF-CNN (C8)
Colorectal Gland Segmentation:CRAGHausdorff Distance (mm)138.4DSF-CNN (C8)
Multi-tissue Nucleus SegmentationKumarDice0.826DSF-CNN (C8)
Multi-tissue Nucleus SegmentationKumarHausdorff Distance (mm)60DSF-CNN (C8)

Related Papers

Unpaired Image-to-Image Translation for Segmentation and Signal Unmixing2025-05-27APSeg: Auto-Prompt Model with Acquired and Injected Knowledge for Nuclear Instance Segmentation and Classification2025-04-03FrGNet: A fourier-guided weakly-supervised framework for nuclear instance segmentation2025-02-14LadderMIL: Multiple Instance Learning with Coarse-to-Fine Self-Distillation2025-02-04Are nuclear masks all you need for improved out-of-domain generalisation? A closer look at cancer classification in histopathology2024-11-14HoverFast: an accurate, high-throughput, clinically deployable nuclear segmentation tool for brightfield digital pathology images2024-05-22Towards Large-Scale Training of Pathology Foundation Models2024-03-24Brain tumour classification using BoF-SURF with filter-based feature selection methods2024-01-19