775 research outputs found
Multi-Variate Time Series Similarity Measures and Their Robustness Against Temporal Asynchrony
abstract: The amount of time series data generated is increasing due to the integration of sensor technologies with everyday applications, such as gesture recognition, energy optimization, health care, video surveillance. The use of multiple sensors simultaneously
for capturing different aspects of the real world attributes has also led to an increase in dimensionality from uni-variate to multi-variate time series. This has facilitated richer data representation but also has necessitated algorithms determining similarity between two multi-variate time series for search and analysis.
Various algorithms have been extended from uni-variate to multi-variate case, such as multi-variate versions of Euclidean distance, edit distance, dynamic time warping. However, it has not been studied how these algorithms account for asynchronous in time series. Human gestures, for example, exhibit asynchrony in their patterns as different subjects perform the same gesture with varying movements in their patterns at different speeds. In this thesis, we propose several algorithms (some of which also leverage metadata describing the relationships among the variates). In particular, we present several techniques that leverage the contextual relationships among the variates when measuring multi-variate time series similarities. Based on the way correlation is leveraged, various weighing mechanisms have been proposed that determine the importance of a dimension for discriminating between the time series as giving the same weight to each dimension can led to misclassification. We next study the robustness of the considered techniques against different temporal asynchronies, including shifts and stretching.
Exhaustive experiments were carried on datasets with multiple types and amounts of temporal asynchronies. It has been observed that accuracy of algorithms that rely on data to discover variate relationships can be low under the presence of temporal asynchrony, whereas in case of algorithms that rely on external metadata, robustness against asynchronous distortions tends to be stronger. Specifically, algorithms using external metadata have better classification accuracy and cluster separation than existing state-of-the-art work, such as EROS, PCA, and naive dynamic time warping.Dissertation/ThesisMasters Thesis Computer Science 201
Joint optimization of manifold learning and sparse representations for face and gesture analysis
Face and gesture understanding algorithms are powerful enablers in intelligent vision systems for surveillance, security, entertainment, and smart spaces. In the future, complex networks of sensors and cameras may disperse directions to lost tourists, perform directory lookups in the office lobby, or contact the proper authorities in case of an emergency. To be effective, these systems will need to embrace human subtleties while interacting with people in their natural conditions. Computer vision and machine learning techniques have recently become adept at solving face and gesture tasks using posed datasets in controlled conditions. However, spontaneous human behavior under unconstrained conditions, or in the wild, is more complex and is subject to considerable variability from one person to the next. Uncontrolled conditions such as lighting, resolution, noise, occlusions, pose, and temporal variations complicate the matter further. This thesis advances the field of face and gesture analysis by introducing a new machine learning framework based upon dimensionality reduction and sparse representations that is shown to be robust in posed as well as natural conditions. Dimensionality reduction methods take complex objects, such as facial images, and attempt to learn lower dimensional representations embedded in the higher dimensional data. These alternate feature spaces are computationally more efficient and often more discriminative. The performance of various dimensionality reduction methods on geometric and appearance based facial attributes are studied leading to robust facial pose and expression recognition models. The parsimonious nature of sparse representations (SR) has successfully been exploited for the development of highly accurate classifiers for various applications. Despite the successes of SR techniques, large dictionaries and high dimensional data can make these classifiers computationally demanding. Further, sparse classifiers are subject to the adverse effects of a phenomenon known as coefficient contamination, where for example variations in pose may affect identity and expression recognition. This thesis analyzes the interaction between dimensionality reduction and sparse representations to present a unified sparse representation classification framework that addresses both issues of computational complexity and coefficient contamination. Semi-supervised dimensionality reduction is shown to mitigate the coefficient contamination problems associated with SR classifiers. The combination of semi-supervised dimensionality reduction with SR systems forms the cornerstone for a new face and gesture framework called Manifold based Sparse Representations (MSR). MSR is shown to deliver state-of-the-art facial understanding capabilities. To demonstrate the applicability of MSR to new domains, MSR is expanded to include temporal dynamics. The joint optimization of dimensionality reduction and SRs for classification purposes is a relatively new field. The combination of both concepts into a single objective function produce a relation that is neither convex, nor directly solvable. This thesis studies this problem to introduce a new jointly optimized framework. This framework, termed LGE-KSVD, utilizes variants of Linear extension of Graph Embedding (LGE) along with modified K-SVD dictionary learning to jointly learn the dimensionality reduction matrix, sparse representation dictionary, sparse coefficients, and sparsity-based classifier. By injecting LGE concepts directly into the K-SVD learning procedure, this research removes the support constraints K-SVD imparts on dictionary element discovery. Results are shown for facial recognition, facial expression recognition, human activity analysis, and with the addition of a concept called active difference signatures, delivers robust gesture recognition from Kinect or similar depth cameras
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Pantomimic Gestures for Human-Robot Interaction
This work introduces a pantomimic gesture interface, which classifies human hand gestures using unmanned aerial vehicle (UAV) behaviour recordings as training data. We argue that pantomimic gestures are more intuitive than iconic gestures and show that a pantomimic gesture recognition strategy using micro UAV behaviour recordings can be more robust than one trained directly using hand gestures. Hand gestures are isolated by applying a maximum information criterion, with features extracted using principal component analysis (PCA) and compared using a nearest neighbour classifier. These features are biased in that they are better suited to classifying certain behaviours. We show how a Bayesian update step accounting for the geometry of training features compensates for this, resulting in fairer classification results, and introduce a weighted voting system to aid in sequence labelling.This is the author accepted manuscript. The final version is available from IEEE via http://dx.doi.org/10.1109/TRO.2015.247595
Log-Euclidean Bag of Words for Human Action Recognition
Representing videos by densely extracted local space-time features has
recently become a popular approach for analysing actions. In this paper, we
tackle the problem of categorising human actions by devising Bag of Words (BoW)
models based on covariance matrices of spatio-temporal features, with the
features formed from histograms of optical flow. Since covariance matrices form
a special type of Riemannian manifold, the space of Symmetric Positive Definite
(SPD) matrices, non-Euclidean geometry should be taken into account while
discriminating between covariance matrices. To this end, we propose to embed
SPD manifolds to Euclidean spaces via a diffeomorphism and extend the BoW
approach to its Riemannian version. The proposed BoW approach takes into
account the manifold geometry of SPD matrices during the generation of the
codebook and histograms. Experiments on challenging human action datasets show
that the proposed method obtains notable improvements in discrimination
accuracy, in comparison to several state-of-the-art methods
Sparse and low rank approximations for action recognition
Action recognition is crucial area of research in computer vision with wide range of
applications in surveillance, patient-monitoring systems, video indexing, Human-
Computer Interaction and many more. These applications require automated
action recognition. Robust classification methods are sought-after despite influential
research in this field over past decade. The data resources have grown
tremendously owing to the advances in the digital revolution which cannot be
compared to the meagre resources in the past. The main limitation on a system
when dealing with video data is the computational burden due to large dimensions
and data redundancy. Sparse and low rank approximation methods have evolved
recently which aim at concise and meaningful representation of data. This thesis
explores the application of sparse and low rank approximation methods in the
context of video data classification with the following contributions.
1. An approach for solving the problem of action and gesture classification is
proposed within the sparse representation domain, effectively dealing with
large feature dimensions,
2. Low rank matrix completion approach is proposed to jointly classify more
than one action
3. Deep features are proposed for robust classification of multiple actions
within matrix completion framework which can handle data deficiencies.
This thesis starts with the applicability of sparse representations based classifi-
cation methods to the problem of action and gesture recognition. Random projection
is used to reduce the dimensionality of the features. These are referred
to as compressed features in this thesis. The dictionary formed with compressed
features has proved to be efficient for the classification task achieving comparable
results to the state of the art.
Next, this thesis addresses the more promising problem of simultaneous classifi-
cation of multiple actions. This is treated as matrix completion problem under
transduction setting. Matrix completion methods are considered as the generic
extension to the sparse representation methods from compressed sensing point
of view. The features and corresponding labels of the training and test data are
concatenated and placed as columns of a matrix. The unknown test labels would
be the missing entries in that matrix. This is solved using rank minimization
techniques based on the assumption that the underlying complete matrix would
be a low rank one. This approach has achieved results better than the state of the art on datasets with varying complexities.
This thesis then extends the matrix completion framework for joint classification
of actions to handle the missing features besides missing test labels. In
this context, deep features from a convolutional neural network are proposed.
A convolutional neural network is trained on the training data and features are
extracted from train and test data from the trained network. The performance
of the deep features has proved to be promising when compared to the state of
the art hand-crafted features
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