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Myrin Library News, Vol. 16 No. 1, October 2002
This newsletter announces recent acquisitions of Myrin Library at Ursinus College and provides information and updates about recent projects, exhibits and events.
Published by: Myrin Library
Attention Pyramid Networks for Object Detection With Semantic Information Fusion
Hui Hua, Jiahong Chen
Jan 01, 2024
Pyramid context information fusion has limitations in distinguishing background and important semantic information. The attention mechanism solves the limitations, but the detection effect for small target detection and occluded...
Deep Learning Framework of Vehicle Detection and Tracking System
Rui Zhang
Jan 01, 0001
In the last semester, I designed a system to detect and track vehicle system on the highway. The system is based on the public deep learning framework and utilize pre-trained model to implement the functions of this system. In...
Acceleration of Deep Convolutional Neural Networks Using Adaptive Filter Pruning
While convolutional neural networks (CNNs) have achieved remarkable performance on various supervised and unsupervised learning tasks, they typically consist of a massive number of parameters. This results in significant memory...
FALF ConvNets
Obtaining efficient Convolutional Neural Networks (CNNs) are imperative to enable their application for a wide variety of tasks (classification, detection, etc.). While several methods have been proposed to solve this problem...
Acceleration of Deep Convolutional Neural Networks Using Adaptive Filter Pruning
While convolutional neural networks (CNNs) have achieved remarkable performance on various supervised and unsupervised learning tasks, they typically consist of a massive number of parameters. This results in significant memory...
FALF ConvNets
Obtaining efficient Convolutional Neural Networks (CNNs) are imperative to enable their application for a wide variety of tasks (classification, detection, etc.). While several methods have been proposed to solve this problem...

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