CPS: Synergy: Data Driven Intelligent Controlled Sensing for Cyber Physical Systems
Submitted by Venkatesh Saligrama on Mon, 12/21/2015 - 2:52pm
Related Artifacts
Publications
- Performance guarantees in sensor networks
- Necessary and sufficient conditions for robust identification of uncertain {LTI} systems
- Adaptive statistical sampling methods for decentralized estimation and detection of localized phenomena
- Wireless ad-hoc networks: Strategies and Scaling laws for the fixed {SNR} regime
- On the macroscopic effects of local interactions in multi-hop wireless networks
- Reliable Tracking With Intermittent Communications
- Effect of Geometry on the Diversity-Multiplexing Tradeoff in Relay Channels
- Efficient In-Network Processing Through Local Ad-Hoc Information Coalescence
- One-bit Distributed Sensing and Coding for Field Estimation in Sensor Networks
- Distributed Detection in Sensor Networks with Limited Range Sensors
- On sensing capacity of sensor networks for the class of linear observation, fixed {SNR} models
- Robust Distributed Detection with Limited Range Sensors
- Distributed Tracking in Multihop Sensor Networks With Communication Delays
- On Optimal Outage in Relay Channels With General Fading Distributions
- Wireless Ad Hoc Networks: Strategies and Scaling Laws for the Fixed {SNR} Regime
- Thresholded Basis Pursuit: Quantizing Linear Programming Solutions for Optimal Support Recovery and Approximation in Compressed Sensing
- Distributed Detection in Sensor Networks with Limited Range Multi-Modal Sensors
- Deterministic Designs with Deterministic Guarantees: Toeplitz Compressed Sensing Matrices, Sequence Designs and System Identification
- Fundamental Limits on Sensing Capacity for Sensor Networks and Compressed Sensing
- Motion detection with false discovery rate control
- Motion segmentation and abnormal behavior detection via behavior clustering
- Motion detection with an unstable camera
- Modeling background activity for behavior subtraction
- Abnormal behavior detection and behavior matching for networked cameras
- One-Bit Distributed Sensing and Coding for Field Estimation in Sensor Networks
- Efficient Sensor Management Policies for Distributed Target Tracking in Multihop Sensor Networks
- Behavior Subtraction
- Compressed Blind De-convolution
- Boolean Compressed Sensing and Noisy Group Testing
- Anomaly Detection with Score functions based on Nearest Neighbor Graphs
- Implicit Active-Contouring with {MRF}
- Unsupervised camera network structure estimation based on activity
- Abnormal events detection based on spatio-temporal co-occurences
- Foreground-Adaptive Background Subtraction
- A technical framework for light- handed regulation of cognitive radios
- Probabilistic Belief Revision with Structural Constraints
- Graph-constrained group testing
- On compressed blind de-convolution of filtered sparse processes
- Sparsity penalized reconstruction framework for broadband dispersion extraction
- A new algorithm for outlier rejection in particle filters
- Revision of marginal probability assessments
- Noisy filtered sparse processes: Reconstruction and compression
- Distributed detection in sensor networks with limited range multimodal sensors
- Information theoretic bounds for compressed sensing
- Activity Based Matching in Distributed Camera Networks
- Video Anomaly Identification
- A Token Based Algorithm to Distributed Computation in Sensor Networks
- Active Boosted Learning (ActBoost)
- Sensing-aware classification with high-dimensional data
- Non-adaptive probabilistic group testing with noisy measurements: Near-optimal bounds with efficient algorithms
- Sensing structure in learning-based binary classification of high-dimensional data
- Structural similarity and distance in learning
- Broadband Dispersion Extraction Using Simultaneous Sparse Penalization
- Thresholded Basis Pursuit: {LP} Algorithm for Order-Wise Optimal Support Recovery for Sparse and Approximately Sparse Signals From Noisy Random Measurements
- Abnormality detection using low-level co-occurring events
- A Token-Based Approach for Distributed Computation in Sensor Networks
- Cost Sensitive Sequential Classification
- Graph-based Learning with Unbalanced Clusters
- Local Anomaly Detection
- Multi-Stage Classifier Design
- Two stage decision system
- A combined approach to multi-label multi-task learning
- Sensing aware dimensionality reduction for nearest neighbor classification of high dimensional signals
- New statistic in P-value estimation for anomaly detection
- Sample complexity of salient feature identification for sparse signal processing
- Local Supervised Learning through Space Partitioning
- Exploratory search of long surveillance videos
- Non-adaptive group testing: Explicit bounds and novel algorithms
- Video anomaly detection based on local statistical aggregates
- Bayesian filtering without an observation model
- Real-Time Activity Search of Surveillance Video
- Aperiodic Sequences With Uniformly Decaying Correlations With Applications to Compressed Sensing and System Identification
- Boolean Compressed Sensing and Noisy Group Testing
- Graph-Constrained Group Testing
- Behavior Subtraction
- Sensing-Aware Kernel {SVM}
- Necessary and Sufficient Conditions for Novel Word Detection in Separable Topic Models
- Near-Optimal Stochastic Threshold Group Testing
- An impossibility result for high dimensional supervised learning
- Stochastic threshold group testing
- Sparse signal processing with linear and non-linear observations: {A} unified shannon theoretic approach
- Topic Discovery through Data Dependent and Random Projections
- A new geometric approach to latent topic modeling and discovery
- Compressive sensing bounds through a unifying framework for sparse models
- A new one-class {SVM} for anomaly detection
- User-assisted reflection detection and feature point tracking
- Online local linear classification
- Sparse signal recovery under Poisson statistics
- Supervised Sequential Classification Under Budget Constraints
- Dynamic topic discovery through sequential projections
- Locally-Linear Learning Machines {(L3M)}
- Multi-stage classifier design
- Introduction to the issue on anomalous pattern discovery for spatial, temporal, networked, and high-dimensional signals
- A Topic Modeling Approach to Ranking
- Non-Adaptive Group Testing with Inhibitors
- {RAPID:} Rapidly Accelerated Proximal Gradient Algorithms for Convex Minimization
- Person Re-identification via Structured Prediction
- Retrieval in Long Surveillance Videos using User Described Motion and Object Attributes
- Sparse Recovery with Linear and Nonlinear Observations: Dependent and Noisy Data
- Efficient Minimax Signal Detection on Graphs
- Information-theoretic bounds for adaptive sparse recovery
- Sparse signal recovery under poisson statistics for online marketing applications
- Anomalous cluster detection
- Spectral clustering with imbalanced data
- Fast margin-based cost-sensitive classification
- Sensing-aware kernel {SVM}
- Model Selection by Linear Programming
- A Novel Visual Word Co-occurrence Model for Person Re-identification
- An {LP} for Sequential Learning Under Budgets
- Connected Sub-graph Detection
- Efficient Distributed Topic Modeling with Provable Guarantees
- Information-Theoretic Characterization of Sparse Recovery
- Non-Adaptive Group Testing: Explicit Bounds and Novel Algorithms
- Supervised Hashing with Deep Neural Networks
- Classifying Unseen Instances by Learning Class-Independent Similarity Functions
- {BING++:} {A} Fast High Quality Object Proposal Generator at 100fps
- Algorithms for Linear Bandits on Polyhedral Sets
- Sensor Selection by Linear Programming
- Necessary and Sufficient Conditions and a Provably Efficient Algorithm for Separable Topic Discovery
- Learning Mixed Membership Mallows Models from Pairwise Comparisons
- Max-Cost Discrete Function Evaluation Problem under a Budget
- Efficient Learning by Directed Acyclic Graph For Resource Constrained Prediction
- Efficient Activity Retrieval through Semantic Graph Queries
- Non-adaptive group testing with inhibitors
- Most large topic models are approximately separable
- Learning immune-defectives graph through group tests
- Zero-Shot Learning via Semantic Similarity Embedding
- Group Membership Prediction
- Efficient detection and localization on graph structured data
- Learning shared rankings from mixtures of noisy pairwise comparisons
- Rapid: Rapidly accelerated proximal gradient algorithms for convex minimization
- Cost effective algorithms for spectral bandits
- Learning Efficient Anomaly Detectors from {K-NN} Graphs
- A Topic Modeling Approach to Ranking
- Correction to "Boolean Compressed Sensing and Noisy Group Testing"
- Prediction of hospitalization due to heart diseases by supervised learning methods
- Learning Joint Feature Adaptation for Zero-Shot Recognition
- Sequential Learning without Feedback
- On the Non-Existence of Unbiased Estimators in Constrained Estimation Problems
- Clustering and Community Detection with Imbalanced Clusters
- Quantifying and Reducing Stereotypes in Word Embeddings
- Structured Prediction with Test-time Budget Constraints
- Learning Minimum Volume Sets and Anomaly Detectors from {KNN} Graphs
- Optimally Pruning Decision Tree Ensembles With Feature Cost
- Man is to Computer Programmer as Woman is to Homemaker? Debiasing Word Embeddings
- Energy-Efficient Adaptive Classifier Design for Mobile Systems
- Efficient algorithms for linear polyhedral bandits
- Zero-Shot Recognition via Structured Prediction
- Zero-Shot Learning via Joint Latent Similarity Embedding
- Efficient Training of Very Deep Neural Networks for Supervised Hashing
- Minimax Optimal Sparse Signal Recovery With Poisson Statistics
- Guest Editorial Inference and Learning over Networks
- Retrieval in Long-Surveillance Videos Using User-Described Motion and Object Attributes
- A Provably Efficient Algorithm for Separable Topic Discovery
- Lower Bounds for Two-Sample Structural Change Detection in Ising and Gaussian Models
- Crowdsourcing with Sparsely Interacting Workers
- Sequential Dynamic Decision Making with Deep Neural Nets on a Test-Time Budget
- Adaptive Classification for Prediction Under a Budget
- Comments on the proof of adaptive submodular function minimization
- Dynamic Model Selection for Prediction Under a Budget
- Field of Groves: An Energy-Efficient Random Forest
- Adaptive Neural Networks for Fast Test-Time Prediction
- Clustering and Community Detection With Imbalanced Clusters
- Comments on the Proof of Adaptive Stochastic Set Cover Based on Adaptive Submodularity and Its Implications for the Group Identification Problem in "Group-Based Active Query Selection for Rapid Diagnosis in Time-Critical Situations"
- Learning Immune-Defectives Graph Through Group Tests
- {PRISM:} Person Reidentification via Structured Matching
- An {LP} for Sequential Learning Under Budgets
- Cheap Bandits
- Feature-Budgeted Random Forest
- Optimal multi-vehicle adaptive search with entropy objectives
- Optimal solutions for classes of adaptive search problems
- Multi-object two-agent coordinated search
- Pruning Random Forests for Prediction on a Budget
- Fast algorithms for UAV tasking and routing
- A multi-resolution approach for discovery and 3-D modeling of archaeological sites using satellite imagery and a UAV-borne camera
- Adaptive Neural Networks for Efficient Inference
- Connected Subgraph Detection with Mirror Descent on SDPs
- Unsupervised Sequential Sensor Acquisition
- Resource Constrained Structured Prediction
- Sparse Signal Processing With Linear and Nonlinear Observations: {A} Unified Shannon-Theoretic Approach
- On the Non-Existence of Unbiased Estimators in Constrained Estimation Problems
- Corrections to #x201C;On Decentralized Estimation With Active Queries #x201D; [May 15 2610-2622]
- Multi-agent discrete search with limited visibility