2019
DOI: 10.1101/620245
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DeepPoseKit, a software toolkit for fast and robust animal pose estimation using deep learning

Abstract: Quantitative behavioral measurements are important for answering questions across scientific 13 disciplines-from neuroscience to ecology. State-of-the-art deep-learning methods offer major advances in 14 data quality and detail by allowing researchers to automatically estimate locations of an animal's body parts 15 directly from images or videos. However, currently-available animal pose estimation methods have limitations 16 in speed and robustness. Here we introduce a new easy-to-use software toolkit, D… Show more

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Cited by 123 publications
(203 citation statements)
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“…There are, however, many other effective open-source solutions for animal tracking and pose-estimation 20,22,69 and SimBA is agnostic to the tools used to extrapolate positional coordinates. SimBA also has an interface for DeepPoseKit 26 that permits a range of alternative neural network architectures for pose-estimation that may offer speed and accuracy advantages 70 . Others have also successfully implemented YOLO-based approaches 71 .…”
Section: Discussionmentioning
confidence: 99%
See 1 more Smart Citation
“…There are, however, many other effective open-source solutions for animal tracking and pose-estimation 20,22,69 and SimBA is agnostic to the tools used to extrapolate positional coordinates. SimBA also has an interface for DeepPoseKit 26 that permits a range of alternative neural network architectures for pose-estimation that may offer speed and accuracy advantages 70 . Others have also successfully implemented YOLO-based approaches 71 .…”
Section: Discussionmentioning
confidence: 99%
“…Such methods can permit online classifications in semi-natural environments and are a foundation for impending closed-loop monitoring and forecasting systems 25 in behavioural neuroscience, but do require significant investment in specialized hardware and a working knowledge of computer science approaches. Parallel advances in animal tracking have produced accessible open-source pose-estimation tools for accurate tracking of experimenter-defined body-parts in noisy and variable environments [26][27][28][29] (Table 1). These open-source initiatives have proven to be both far less expensive to execute, and provide better animal tracking outcomes, than currently available commercial products 30 .…”
Section: Introductionmentioning
confidence: 99%
“…In kind, many researchers are taking steps backwards to first properly understand the component parts of a complex behavioral sequence before proceeding to identify the neuronal correlates that drive those motor patterns. Both supervised and unsupervised machine learning algorithms are now able to follow unlabeled individual limbs on an experimental animal and automatically define behaviors of interest [12,14,15,[24][25][26]. Although the majority of these tools have yet to be adopted in mass by the pain research community, some of this technology is already in use by pain researchers.…”
Section: Discussionmentioning
confidence: 99%
“…Recent machine vision advances in the precise posture tracking of individual animals 17,18,52 as well as of the positions of highly-similar organisms in groups 46 are enabling new quantitative studies of behavior 53,54 . In collective behavior specifically, the use of CNNs for the pixel-based identification of individual organisms has significantly advanced markerless, long-time tracking in 2D, from more modest assemblies (~10 individuals) 34 to large groups (~100 individuals) 46 .…”
Section: Discussionmentioning
confidence: 99%