Impact of Disentanglement on Pruning Neural NetworksShneider, Carl ; Rostami Abendansari, Peyman ; Kacem, Anis et alScientific Conference (2023, July 19) Deploying deep learning neural networks on edge devices, to accomplish task specific objectives in the real-world, requires a reduction in their memory footprint, power consumption, and latency. This can ... [more ▼] Deploying deep learning neural networks on edge devices, to accomplish task specific objectives in the real-world, requires a reduction in their memory footprint, power consumption, and latency. This can be realized via efficient model compression. Disentangled latent representations produced by variational autoencoder (VAE) networks are a promising approach for achieving model compression because they mainly retain task-specific information, discarding useless information for the task at hand. We make use of the Beta-VAE framework combined with a standard criterion for pruning to investigate the impact of forcing the network to learn disentangled representations on the pruning process for the task of classification. In particular, we perform experiments on MNIST and CIFAR10 datasets, examine disentanglement challenges, and propose a path forward for future works. [less ▲] Detailed reference viewed: 122 (0 UL) Impact of Disentanglement on Pruning Neural NetworksShneider, Carl ; Rostami Abendansari, Peyman ; Kacem, Anis et alPoster (2023, June 20) Efficient model compression techniques are required to deploy deep neural networks (DNNs) on edge devices for task specific objectives. A variational autoencoder (VAE) framework is combined with a pruning ... [more ▼] Efficient model compression techniques are required to deploy deep neural networks (DNNs) on edge devices for task specific objectives. A variational autoencoder (VAE) framework is combined with a pruning criterion to investigate the impact of having the network learn disentangled representations on the pruning process for the classification task. [less ▲] Detailed reference viewed: 138 (0 UL) Compression of Deep Neural Networks for Space Autonomous SystemsShneider, Carl ; Sinha, Nilotpal ; Jamrozik, Michele Lynn et alPoster (2023, April 19) Efficient compression techniques are required to deploy deep neural networks (DNNs) on edge devices for space resource utilization tasks. Two approaches are investigated. Detailed reference viewed: 126 (0 UL) Revisiting the Training of Very Deep Neural Networks without Skip ConnectionsOyedotun, Oyebade ; Shabayek, Abd El Rahman ; Aouada, Djamila et alPoster (2021) Detailed reference viewed: 338 (12 UL) Dense and Sparse 3D Deformation Signatures for 3D Dynamic Face RecognitionShabayek, Abd El Rahman ; Aouada, Djamila ![]() in IEEE Access (2021), 9 Detailed reference viewed: 307 (4 UL) Home-based rehabilitation system for strokesurvivors: a clinical evaluationGhorbel, Enjie ; Baptista, Renato ; Shabayek, Abd El Rahman et alin Journal of medical systems (2020) Detailed reference viewed: 197 (13 UL) Improved Highway Network Block for Training Very Deep Neural NetworksOyedotun, Oyebade ; Shabayek, Abd El Rahman ; Aouada, Djamila et alin IEEE Access (2020) Detailed reference viewed: 215 (16 UL) 3D SPARSE DEFORMATION SIGNATURE FOR DYNAMIC FACE RECOGNITIONShabayek, Abd El Rahman ; Aouada, Djamila ; Cherenkova, Kseniya et alin 27th IEEE International Conference on Image Processing (ICIP 2020), Abu Dhabi 25-28 October 2020 (2020, October) Detailed reference viewed: 249 (2 UL) Deep network compression with teacher latent subspace learning and LASSOOyedotun, Oyebade ; Shabayek, Abd El Rahman ; Aouada, Djamila et alin Applied Intelligence (2020) Detailed reference viewed: 349 (18 UL) GOING DEEPER WITH NEURAL NETWORKS WITHOUT SKIP CONNECTIONSOyedotun, Oyebade ; Shabayek, Abd El Rahman ; Aouada, Djamila et alin IEEE International Conference on Image Processing (ICIP 2020), Abu Dhabi, UAE, Oct 25–28, 2020 (2020, May 30) Detailed reference viewed: 227 (9 UL) 3D DEFORMATION SIGNATURE FOR DYNAMIC FACE RECOGNITIONShabayek, Abd El Rahman ; Aouada, Djamila ; Cherenkova, Kseniya et alin 45th International Conference on Acoustics, Speech, and Signal Processing (ICASSP 2020), Barcelona 4-8 May 2020 (2020, May) Detailed reference viewed: 252 (0 UL) Towards Automatic CAD Modeling from 3D Scan Sketch based RepresentationShabayek, Abd El Rahman ; Aouada, Djamila ; Cherenkova, Kseniya et alin Proceedings of the 15th International Joint Conference on Computer Vision, Imaging and Computer Graphics Theory and Applications (VISIGRAPP 2020), GRAPP (2020, February) Detailed reference viewed: 238 (13 UL) BODYFITR: Robust Automatic 3D Human Body FittingSaint, Alexandre Fabian A ; Shabayek, Abd El Rahman ; Cherenkova, Kseniya et alin Proceedings of the 2019 IEEE International Conference on Image Processing (ICIP) (2019, September 22) This paper proposes BODYFITR, a fully automatic method to fit a human body model to static 3D scans with complex poses. Automatic and reliable 3D human body fitting is necessary for many applications ... [more ▼] This paper proposes BODYFITR, a fully automatic method to fit a human body model to static 3D scans with complex poses. Automatic and reliable 3D human body fitting is necessary for many applications related to healthcare, digital ergonomics, avatar creation and security, especially in industrial contexts for large-scale product design. Existing works either make prior assumptions on the pose, require manual annotation of the data or have difficulty handling complex poses. This work addresses these limitations by providing a novel automatic fitting pipeline with carefully integrated building blocks designed for a systematic and robust approach. It is validated on the 3DBodyTex dataset, with hundreds of high-quality 3D body scans, and shown to outperform prior works in static body pose and shape estimation, qualitatively and quantitatively. The method is also applied to the creation of realistic 3D avatars from the high-quality texture scans of 3DBodyTex, further demonstrating its capabilities. [less ▲] Detailed reference viewed: 330 (31 UL) An adaptive framework for real-time data reduction in AMI; Shabayek, Abd El Rahman ; et alin Journal of King Saud University - Computer and Information Sciences (2019), 31(3), 392-402 In existing Advanced Metering Infrastructure (AMI), data collection intervals for each smart meter (SM) typically vary from 15 to 60 min. If we have 1 million SMs that transmit data every 15 min, these ... [more ▼] In existing Advanced Metering Infrastructure (AMI), data collection intervals for each smart meter (SM) typically vary from 15 to 60 min. If we have 1 million SMs that transmit data every 15 min, these SMs will export 4 million records per hour. This leads to dramatically increasing bandwidth usage, energy consumption, traffic cost and I/O congestion. In this work, we present an adaptive framework for minimizing the amount of data transfer from SMs. The reduction in the framework is forecasting-based; when an SM reading is close to the forecasted value, the SM does not transmit the reading. In order for the framework to be adaptive to the ever-changing pattern of SM data, it is provided with a pool of forecasting methods. A supervised-learning scheme is employed to switch in real-time to the forecasting method most suitable to the current data pattern. The experimental results demonstrate that the proposed framework achieves data reduction rates up to 98% with accuracy 96%, depending on the operational parameters of the framework and consumer behavior (statistical features of SM data). [less ▲] Detailed reference viewed: 177 (0 UL) Home Self-Training: Visual Feedback for Assisting Physical Activity for Stroke SurvivorsBaptista, Renato ; Ghorbel, Enjie ; Shabayek, Abd El Rahman et alin Computer Methods and Programs in Biomedicine (2019) Background and Objective: With the increase in the number of stroke survivors, there is an urgent need for designing appropriate home-based rehabilitation tools to reduce health-care costs. The objective ... [more ▼] Background and Objective: With the increase in the number of stroke survivors, there is an urgent need for designing appropriate home-based rehabilitation tools to reduce health-care costs. The objective is to empower the rehabilitation of post-stroke patients at the comfort of their homes by supporting them while exercising without the physical presence of the therapist. Methods: A novel low-cost home-based training system is introduced. This system is designed as a composition of two linked applications: one for the therapist and another one for the patient. The therapist prescribes personalized exercises remotely, monitors the home-based training and re-adapts the exercises if required. On the other side, the patient loads the prescribed exercises, trains the prescribed exercise while being guided by color-based visual feedback and gets updates about the exercise performance. To achieve that, our system provides three main functionalities, namely: 1) Feedback proposals guiding a personalized exercise session, 2) Posture monitoring optimizing the effectiveness of the session, 3) Assessment of the quality of the motion. Results: The proposed system is evaluated on 10 healthy participants without any previous contact with the system. To analyze the impact of the feedback proposals, we carried out two different experimental sessions: without and with feedback proposals. The obtained results give preliminary assessments about the interest of using such feedback. Conclusions: Obtained results on 10 healthy participants are promising. This encourages to test the system in a realistic clinical context for the rehabilitation of stroke survivors. [less ▲] Detailed reference viewed: 223 (16 UL) Highway Network Block with Gates Constraints for Training Very Deep NetworksOyedotun, Oyebade ; Shabayek, Abd El Rahman ; Aouada, Djamila et alin 2018 IEEE International Conference on Computer Vision and Pattern Recognition Workshop, June 18-22, 2018 (2018, June 19) In this paper, we propose to reformulate the learning of the highway network block to realize both early optimization and improved generalization of very deep networks while preserving the network depth ... [more ▼] In this paper, we propose to reformulate the learning of the highway network block to realize both early optimization and improved generalization of very deep networks while preserving the network depth. Gate constraints are duly employed to improve optimization, latent representations and parameterization usage in order to efficiently learn hierarchical feature transformations which are crucial for the success of any deep network. One of the earliest very deep models with over 30 layers that was successfully trained relied on highway network blocks. Although, highway blocks suffice for alleviating optimization problem via improved information flow, we show for the first time that further in training such highway blocks may result into learning mostly untransformed features and therefore a reduction in the effective depth of the model; this could negatively impact model generalization performance. Using the proposed approach, 15-layer and 20-layer models are successfully trained with one gate and a 32-layer model using three gates. This leads to a drastic reduction of model parameters as compared to the original highway network. Extensive experiments on CIFAR-10, CIFAR-100, Fashion-MNIST and USPS datasets are performed to validate the effectiveness of the proposed approach. Particularly, we outperform the original highway network and many state-ofthe- art results. To the best our knowledge, on the Fashion-MNIST and USPS datasets, the achieved results are the best reported in literature. [less ▲] Detailed reference viewed: 344 (24 UL) Key-Skeleton Based Feedback Tool for Assisting Physical ActivityBaptista, Renato ; Ghorbel, Enjie ; Shabayek, Abd El Rahman et alin 2018 Zooming Innovation in Consumer Electronics International Conference (ZINC), 30-31 May 2018 (2018, May 31) This paper presents an intuitive feedback tool able to implicitly guide motion with respect to a reference movement. Such a tool is important in multiple applications requiring assisting physical ... [more ▼] This paper presents an intuitive feedback tool able to implicitly guide motion with respect to a reference movement. Such a tool is important in multiple applications requiring assisting physical activities as in sports or rehabilitation. Our proposed approach is based on detecting key skeleton frames from a reference sequence of skeletons. The feedback is based on the 3D geometry analysis of the skeletons by taking into account the key-skeletons. Finally, the feedback is illustrated by a color-coded tool, which reflects the motion accuracy. [less ▲] Detailed reference viewed: 249 (7 UL) IMPROVING THE CAPACITY OF VERY DEEP NETWORKS WITH MAXOUT UNITSOyedotun, Oyebade ; Shabayek, Abd El Rahman ; Aouada, Djamila et alin 2018 IEEE International Conference on Acoustics, Speech and Signal Processing (2018, February 21) Deep neural networks inherently have large representational power for approximating complex target functions. However, models based on rectified linear units can suffer reduction in representation ... [more ▼] Deep neural networks inherently have large representational power for approximating complex target functions. However, models based on rectified linear units can suffer reduction in representation capacity due to dead units. Moreover, approximating very deep networks trained with dropout at test time can be more inexact due to the several layers of non-linearities. To address the aforementioned problems, we propose to learn the activation functions of hidden units for very deep networks via maxout. However, maxout units increase the model parameters, and therefore model may suffer from overfitting; we alleviate this problem by employing elastic net regularization. In this paper, we propose very deep networks with maxout units and elastic net regularization and show that the features learned are quite linearly separable. We perform extensive experiments and reach state-of-the-art results on the USPS and MNIST datasets. Particularly, we reach an error rate of 2.19% on the USPS dataset, surpassing the human performance error rate of 2.5% and all previously reported results, including those that employed training data augmentation. On the MNIST dataset, we reach an error rate of 0.36% which is competitive with the state-of-the-art results. [less ▲] Detailed reference viewed: 426 (25 UL) 3DBodyTex: Textured 3D Body DatasetSaint, Alexandre Fabian A ; Ahmed, Eman ; Shabayek, Abd El Rahman et alin 2018 Sixth International Conference on 3D Vision (3DV 2018) (2018) In this paper, a dataset, named 3DBodyTex, of static 3D body scans with high-quality texture information is presented along with a fully automatic method for body model fitting to a 3D scan. 3D shape ... [more ▼] In this paper, a dataset, named 3DBodyTex, of static 3D body scans with high-quality texture information is presented along with a fully automatic method for body model fitting to a 3D scan. 3D shape modelling is a fundamental area of computer vision that has a wide range of applications in the industry. It is becoming even more important as 3D sensing technologies are entering consumer devices such as smartphones. As the main output of these sensors is the 3D shape, many methods rely on this information alone. The 3D shape information is, however, very high dimensional and leads to models that must handle many degrees of freedom from limited information. Coupling texture and 3D shape alleviates this burden, as the texture of 3D objects is complementary to their shape. Unfortunately, high-quality texture content is lacking from commonly available datasets, and in particular in datasets of 3D body scans. The proposed 3DBodyTex dataset aims to fill this gap with hundreds of high-quality 3D body scans with high-resolution texture. Moreover, a novel fully automatic pipeline to fit a body model to a 3D scan is proposed. It includes a robust 3D landmark estimator that takes advantage of the high-resolution texture of 3DBodyTex. The pipeline is applied to the scans, and the results are reported and discussed, showcasing the diversity of the features in the dataset. [less ▲] Detailed reference viewed: 1567 (88 UL) Towards Automatic Human Body Model Fitting to a 3D ScanSaint, Alexandre Fabian A ; Shabayek, Abd El Rahman ; Aouada, Djamila et alin D'APUZZO, Nicola (Ed.) Proceedings of 3DBODY.TECH 2017 - 8th International Conference and Exhibition on 3D Body Scanning and Processing Technologies, Montreal QC, Canada, 11-12 Oct. 2017 (2017, October) This paper presents a method to automatically recover a realistic and accurate body shape of a person wearing clothing from a 3D scan. Indeed, in many practical situations, people are scanned wearing ... [more ▼] This paper presents a method to automatically recover a realistic and accurate body shape of a person wearing clothing from a 3D scan. Indeed, in many practical situations, people are scanned wearing clothing. The underlying body shape is thus partially or completely occluded. Yet, it is very desirable to recover the shape of a covered body as it provides non-invasive means of measuring and analysing it. This is particularly convenient for patients in medical applications, customers in a retail shop, as well as in security applications where suspicious objects under clothing are to be detected. To recover the body shape from the 3D scan of a person in any pose, a human body model is usually fitted to the scan. Current methods rely on the manual placement of markers on the body to identify anatomical locations and guide the pose fitting. The markers are either physically placed on the body before scanning or placed in software as a postprocessing step. Some other methods detect key points on the scan using 3D feature descriptors to automate the placement of markers. They usually require a large database of 3D scans. We propose to automatically estimate the body pose of a person from a 3D mesh acquired by standard 3D body scanners, with or without texture. To fit a human model to the scan, we use joint locations as anchors. These are detected from multiple 2D views using a conventional body joint detector working on images. In contrast to existing approaches, the proposed method is fully automatic, and takes advantage of the robustness of state-of-art 2D joint detectors. The proposed approach is validated on scans of people in different poses wearing garments of various thicknesses and on scans of one person in multiple poses with known ground truth wearing close-fitting clothing. [less ▲] Detailed reference viewed: 435 (36 UL) |
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