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dynamic-time-warping
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gesture recognition toolkit
machine-learning
random-forest
linear-regression
kmeans
support-vector-machine
dynamic-time-warping
gesture-recognition
gesture-recognition-toolkit
softmax
grt
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Updated
Nov 1, 2019 - C++
Python implementation of KNN and DTW classification algorithm
machine-learning
timeseries
nearest-neighbors
dynamic-programming
human-activity-recognition
dynamic-time-warping
classification-algorithm
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Updated
Oct 3, 2018 - Jupyter Notebook
Time series distances: Dynamic Time Warping (DTW)
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Updated
Aug 18, 2020 - Python
Python implementation of soft-DTW.
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Updated
Jan 8, 2019 - Python
Transfer learning for time series classification
deep-neural-networks
deep-learning
dtw
transfer-learning
research-paper
dynamic-time-warping
time-series-analysis
time-series-classification
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Updated
Jun 6, 2019 - Python
Decision Trees, Random Forest, Dynamic Time Warping, Naive Bayes, KNN, Linear Regression, Logistic Regression, Mixture Of Gaussian, Neural Network, PCA, SVD, Gaussian Naive Bayes, Fitting Data to Gaussian, K-Means
neural-network
random-forest
linear-regression
machine-learning-algorithms
naive-bayes-classifier
supervised-learning
gaussian-mixture-models
logistic-regression
kmeans
decision-trees
knn
principal-component-analysis
dynamic-time-warping
kmeans-clustering
em-algorithm
kmeans-algorithm
singular-value-decomposition
knn-classification
gaussian-classifier
value-iteration-algorithm
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May 15, 2017 - MATLAB
Data augmentation using synthetic data for time series classification with deep residual networks
deep-learning
dtw
convolutional-neural-networks
dynamic-time-warping
data-augmentation
time-series-classification
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Oct 11, 2018 - Python
Implementation of soft dynamic time warping in pytorch
deep-neural-networks
deep-learning
time-series
pytorch
dynamic-time-warping
cost-function
soft-dtw
pytorch-implementation
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Feb 20, 2019 - Python
Quantify the difference between two arbitrary curves in space
python
dtw
measure
distance
curve
similarity-measures
warping
dynamic-time-warping
frechet-distance
fr-chet-distance
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Feb 7, 2020 - Jupyter Notebook
Fast CUDA implementation of (differentiable) soft dynamic time warping for PyTorch using Numba
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Updated
May 3, 2020 - Python
Dynamic Time Warping (DTW) and related algorithms in Julia, at Julia speeds
time-series
signal-processing
distance-measures
signal-analysis
dynamic-time-warping
optimal-transport
time-series-analysis
time-series-clustering
soft-dtw
dynamic-frequency-warping
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Aug 20, 2020 - Julia
Measure the distance between two spectra/signals using optimal transport and related metrics
spectrum
metrics
histogram
linear-systems
dynamic-time-warping
spectral-analysis
optimal-transport
barycentric-coordinates
earth-movers-distance
spectral-embedding
riemannian-manifold
wasserstein-distance
dynamic-frequency-warping
barycenter
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Aug 8, 2020 - Julia
A simple framework for gesture recognition in Java
microsoft
java
demo
dtw
eclipse
findbugs
pmd
kinect
javadoc
eclipse-plugin
ivy
java-8
bintray
dynamic-time-warping
gesture-recognition
kinect-sensor
knn-classification
kinect-v2
kinect2
knn-algorithm
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Oct 2, 2019 - Java
Keyword Spotting for detecting a word in an audio file
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Jul 21, 2019 - Python
ICDE 2019 - KV-match: A Subsequence Matching Approach Supporting Normalization and Time Warping
timeseries
key-value
dynamic-time-warping
normalization
similarity-search
subsequence-matching
kv-match
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Updated
Jan 8, 2020 - Java
Time series distance measures
time-series
longest-common-subsequence
dynamic-time-warping
distance-measure
edit-distance-on-real-sequence
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Aug 26, 2019 - Python
Voice Alignment and Conversion with Neural Networks and the WORLD codec.
neural-network
voice
speech
alignment
trajectory-generation
dwt
mfcc
speaker
dynamic-time-warping
voice-conversion
sptk
voice-alignment
voice-generation
mlpg
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Apr 27, 2019 - Jupyter Notebook
Fast shapelet trees and distance measures
python
machine-learning
timeseries
dtw
numpy
cython
citation
scipy
distance-measures
dynamic-time-warping
euclidean-distances
karlsson
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May 18, 2020 - Python
Canny Edge Detection, Eigen Faces Face Recognition Algorithm, Applying Sobel Filter, Hough Lines, Harris Corner Detection as a Feature, Image Manipulation
computer-vision
image-processing
convolution
edge-detection
harris-corners
hough-transform
dynamic-time-warping
canny-edge-detection
eigenfaces
sobel
hough-lines
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Apr 29, 2017 - Jupyter Notebook
Python implementation of the SparseDTW algorithm
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Sep 28, 2016 - Python
This work focused on fast searching for the best warping window for Dynamic Time Warping and Time Series Classification
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Jun 7, 2018 - Java
Dynamic Time Warping single header library for C++
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Aug 18, 2019 - C++
Dynamic Time Warping Algorithm can be used to measure similarity between 2 time series. Objective of the algorithm is to find the optimal global alignment between the two time series, by exploiting temporal distortions between the 2 time series.
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Jun 24, 2018 - C++
A machine learning interface for isolated temporal sequence classification algorithms in Python.
python
machine-learning
hmm
time-series
dtw
knn
dynamic-time-warping
sequence-classification
hidden-markov-models
temporal-sequences
sequential-patterns
time-series-classification
isolated
multivariate-timeseries
variable-length
classification-algorithms
k-nearest-neighbor-classifier
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Jul 7, 2020 - Python
Implementation of naïve and Sakoe-Chiba Dynamic Time Warping
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Jun 24, 2018 - Python
Time series & sequence processing in Python 🗠
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Jul 19, 2019 - Python
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Hi, Thanks for the awesome library!
So I am running a Kmeans on lots of different datasets, which all have roughly four shapes, so I initialize with those shapes and it works well, except for just a few times. There are a few datasets that look different enough that I end up with empty clusters and the algorithm just hangs ("Resumed because of empty cluster" again and again).
I conceptually