ASIST: Annotation-free Synthetic Instance Segmentation and Tracking by Adversarial Simulations
Quan Liu, Isabella M. Gaeta, Mengyang Zhao, Ruining Deng, Aadarsh Jha,, Bryan A. Millis, Anita Mahadevan-Jansen, Matthew J. Tyska, Yuankai Huo

TL;DR
This paper introduces ASIST, a novel annotation-free method for instance segmentation and tracking in microscope videos using adversarial simulations and pixel-embedding deep learning, reducing the need for costly annotations.
Contribution
It combines adversarial simulations with single-stage pixel-embedding learning for microscopy, pioneering annotation-free segmentation and tracking in this domain.
Findings
Achieved 7-11% higher performance on microvilli segmentation and tracking.
Performed comparably to supervised methods on HeLa cell videos.
First study to explore annotation-free microscopy segmentation and tracking.
Abstract
Background: The quantitative analysis of microscope videos often requires instance segmentation and tracking of cellular and subcellular objects. The traditional method consists of two stages: (1) performing instance object segmentation of each frame, and (2) associating objects frame-by-frame. Recently, pixel-embedding-based deep learning approaches these two steps simultaneously as a single stage holistic solution. In computer vision, annotated training data with consistent segmentation and tracking is resource intensive, the severity of which is multiplied in microscopy imaging due to (1) dense objects (e.g., overlapping or touching), and (2) high dynamics (e.g., irregular motion and mitosis). Adversarial simulations have provided successful solutions to alleviate the lack of such annotations in dynamics scenes in computer vision, such as using simulated environments (e.g., computer…
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Taxonomy
TopicsCell Image Analysis Techniques · Image Processing Techniques and Applications · Generative Adversarial Networks and Image Synthesis
