DEEP LEARNING BASED TRAINING OF INSTANCE SEGMENTATION VIA REGRESSION LAYERS

Novel tools and techniques are provided for implementing digital microscopy imaging using deep learning-based segmentation and/or implementing instance segmentation based on partial annotations. In various embodiments, a computing system might receive first and second images, the first image compris...

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Hauptverfasser: BEN-DOR, Amir, ARBEL, Elad, REMER, Itay
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creator BEN-DOR, Amir
ARBEL, Elad
REMER, Itay
description Novel tools and techniques are provided for implementing digital microscopy imaging using deep learning-based segmentation and/or implementing instance segmentation based on partial annotations. In various embodiments, a computing system might receive first and second images, the first image comprising a field of view of a biological sample, while the second image comprises labeling of objects of interest in the biological sample. The computing system might encode, using an encoder, the second image to generate third and fourth encoded images (different from each other) that comprise proximity scores or maps. The computing system might train an AI system to predict objects of interest based at least in part on the third and fourth encoded images. The computing system might generate (using regression) and decode (using a decoder) two or more images based on a new image of a biological sample to predict labeling of objects in the new image.
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subjects CALCULATING
COMPUTING
COUNTING
IMAGE DATA PROCESSING OR GENERATION, IN GENERAL
PHYSICS
title DEEP LEARNING BASED TRAINING OF INSTANCE SEGMENTATION VIA REGRESSION LAYERS
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