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Zeitschriftenartikel:

D. Sabir, M. Hanif, A. Hassan, S. Rehman, M. Shafique:
"TiQSA: Workload Minimization in Convolutional Neural Networks Using Tile Quantization and Symmetry Approximation";
IEEE Access, Volumen 9 (2021), S. 53647 - 53668.



Kurzfassung englisch:
Convolutional Neural Networks (CNNs) in the Internet-of-Things (IoT)-based applications face stringent constraints, like limited memory capacity and energy resources due to many computations in convolution layers. In order to reduce the computational workload in these layers, this paper proposes a hybrid convolution method in conjunction with a Particle of Swarm Convolution Layer Optimization (PSCLO) algorithm. The hybrid convolution is an approximation that exploits the inherent symmetry of filter termed as symmetry approximation and Winograd algorithm structure termed as tile quantization approximation . PSCLO optimizes the balance between workload reduction and accuracy degradation for each convolution layer by selecting fine-tuned thresholds to control each approximation´s intensity. The proposed methods have been evaluated on ImageNet, MNIST, Fashion-MNIST, SVHN, and CIFAR-10 datasets. The proposed techniques achieved ∼5.28x multiplicative workload reduction without significant accuracy degradation (<0.1%) for ImageNet on ResNet-18, which is ∼1.08x less multiplicative workload as compared to state-of-the-art Winograd CNN pruning. For LeNet, ∼3.87x and ∼3.93x was the multiplicative workload reduction for MNIST and Fashion-MNIST datasets. The additive workload reduction was ∼2.5x and ∼2.56x for the respective datasets. There is no significant accuracy loss for MNIST and Fashion-MNIST dataset.


"Offizielle" elektronische Version der Publikation (entsprechend ihrem Digital Object Identifier - DOI)
http://dx.doi.org/10.1109/ACCESS.2021.3069906


Erstellt aus der Publikationsdatenbank der Technischen Universität Wien.