Efficient Whole Slide Image Classification through Fisher Vector Representation
Ravi Kant Gupta, Dadi Dharani, Shambhavi Shanker, Amit Sethi

TL;DR
This paper presents a novel two-stage method for efficient whole slide image classification using selective patch analysis and Fisher vector representation, achieving high accuracy with reduced computational costs.
Contribution
The study introduces a new approach combining patch selection based on pathology significance with Fisher vector encoding for improved efficiency and accuracy in WSI classification.
Findings
Achieves comparable or better accuracy than traditional methods.
Reduces computational load significantly.
Effective across multiple datasets.
Abstract
The advancement of digital pathology, particularly through computational analysis of whole slide images (WSI), is poised to significantly enhance diagnostic precision and efficiency. However, the large size and complexity of WSIs make it difficult to analyze and classify them using computers. This study introduces a novel method for WSI classification by automating the identification and examination of the most informative patches, thus eliminating the need to process the entire slide. Our method involves two-stages: firstly, it extracts only a few patches from the WSIs based on their pathological significance; and secondly, it employs Fisher vectors (FVs) for representing features extracted from these patches, which is known for its robustness in capturing fine-grained details. This approach not only accentuates key pathological features within the WSI representation but also…
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Taxonomy
TopicsFace and Expression Recognition · Industrial Vision Systems and Defect Detection · Image and Object Detection Techniques
