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Robust Activity Recognition via Redundancy-Aware CNNs and Novel Pooling for Noisy Mobile Sensor Data
by
Hamad Ameen, Bnar Azad
, Aminifar, Sadegh Abdollah
in
accelerometer signals
/ Accelerometers
/ Accuracy
/ Classification
/ convolutional neural networks (CNN)
/ Datasets
/ Deep learning
/ Design
/ human activity recognition
/ Image coding
/ Learning strategies
/ mobile sensors
/ Neural networks
/ noise robustness
/ pooling mechanisms
/ Sensors
/ Smart phones
2026
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Robust Activity Recognition via Redundancy-Aware CNNs and Novel Pooling for Noisy Mobile Sensor Data
by
Hamad Ameen, Bnar Azad
, Aminifar, Sadegh Abdollah
in
accelerometer signals
/ Accelerometers
/ Accuracy
/ Classification
/ convolutional neural networks (CNN)
/ Datasets
/ Deep learning
/ Design
/ human activity recognition
/ Image coding
/ Learning strategies
/ mobile sensors
/ Neural networks
/ noise robustness
/ pooling mechanisms
/ Sensors
/ Smart phones
2026
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Do you wish to request the book?
Robust Activity Recognition via Redundancy-Aware CNNs and Novel Pooling for Noisy Mobile Sensor Data
by
Hamad Ameen, Bnar Azad
, Aminifar, Sadegh Abdollah
in
accelerometer signals
/ Accelerometers
/ Accuracy
/ Classification
/ convolutional neural networks (CNN)
/ Datasets
/ Deep learning
/ Design
/ human activity recognition
/ Image coding
/ Learning strategies
/ mobile sensors
/ Neural networks
/ noise robustness
/ pooling mechanisms
/ Sensors
/ Smart phones
2026
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Robust Activity Recognition via Redundancy-Aware CNNs and Novel Pooling for Noisy Mobile Sensor Data
Journal Article
Robust Activity Recognition via Redundancy-Aware CNNs and Novel Pooling for Noisy Mobile Sensor Data
2026
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Overview
This paper proposes a robust convolutional neural network (CNN) architecture for human activity recognition (HAR) using smartphone accelerometer data, evaluated on the WISDM dataset. We introduce two novel pooling mechanisms—Pooling A (Extrema Contrast Pooling (ECP)) and Pooling B (Center Minus Variation (CMV))—that enhance feature discrimination and noise robustness. ECP emphasizes sharp signal transitions through a nonlinear penalty based on the squared range between extrema, while CMV Pooling penalizes local variability by subtracting the standard deviation, improving resilience to noise. Input data are normalized to the [0, 1] range to ensure bounded and interpretable pooled outputs. The proposed framework is evaluated in two separate configurations: (1) a 1D CNN applied to raw tri-axial sensor streams with the proposed pooling layers, and (2) a histogram-based image encoding pipeline that transforms segment-level sensor redundancy into RGB representations for a 2D CNN with fully connected layers. Ablation studies show that histogram encoding provides the largest improvement, while the combination of ECP and CMV further enhances classification performance. Across six activity classes, the 2D CNN system achieves up to 96.84% weighted classification accuracy, outperforming baseline models and traditional average pooling. Under Gaussian, salt-and-pepper, and mixed noise conditions, the proposed pooling layers consistently reduce performance degradation, demonstrating improved stability in real-world sensing environments. These results highlight the benefits of redundancy-aware pooling and histogram-based representations for accurate and robust mobile HAR systems.
Publisher
MDPI AG,Multidisciplinary Digital Publishing Institute (MDPI)
Subject
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