filter selection
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2021 ◽  
Author(s):  
Liutao Yang ◽  
Zhongnian Li ◽  
Zongxiang Pei ◽  
Daoqiang Zhang
Keyword(s):  

Author(s):  
Yongsheng Liang ◽  
Wei Liu ◽  
Shuangyan Yi ◽  
Huoxiang Yang ◽  
Zhenyu He

AbstractIn deep neural network compression, channel/filter pruning is widely used for compressing the pre-trained network by judging the redundant channels/filters. In this paper, we propose a two-step filter pruning method to judge the redundant channels/filters layer by layer. The first step is to design a filter selection scheme based on $$\ell _{2,1}$$ ℓ 2 , 1 -norm by reconstructing the feature map of current layer. More specifically, the filter selection scheme aims to solve a joint $$\ell _{2,1}$$ ℓ 2 , 1 -norm minimization problem, i.e., both the regularization term and feature map reconstruction error term are constrained by $$\ell _{2,1}$$ ℓ 2 , 1 -norm. The $$\ell _{2,1}$$ ℓ 2 , 1 -norm regularization plays a role in the channel/filter selection, while the $$\ell _{2,1}$$ ℓ 2 , 1 -norm feature map reconstruction error term plays a role in the robust reconstruction. In this way, the proposed filter selection scheme can learn a column-sparse coefficient representation matrix that can indicate the redundancy of filters. Since pruning the redundant filters in current layer might dramatically influence the output feature map of the following layer, the second step needs to update the filters of the following layer to assure output of feature map approximates to that of baseline. Experimental results demonstrate the effectiveness of this proposed method. For example, our pruned VGG-16 on ImageNet achieves $$4\times $$ 4 × speedup with 0.95% top-5 accuracy drop. Our pruned ResNet-50 on ImageNet achieves $$2\times $$ 2 × speedup with 1.56% top-5 accuracy drop. Our pruned MobileNet on ImageNet achieves $$2\times $$ 2 × speedup with 1.20% top-5 accuracy drop.


2021 ◽  
Vol 1 (1) ◽  
pp. 9-19
Author(s):  
V. V. Menshikov

The article presents one of the lessons of the "Databases" section of the ninth grade informatics course. This lesson explores such concepts as "DBMS", "sorting", "filter", "selection", "request". Methods of sorting information in a database are considered, as well as methods of searching for information in a database using filters and requests. The content of the lesson corresponds to the teaching materials on informatics for the ninth grade of L. L. Bosova, A. Yu. Bosova. A feature of the presented lesson is that it is intended for students studying at a cadet school (cadets), therefore a military component has been added to it — the examples of databases considered in the lesson are related to aviation. The databases, on the example of which the educational material of the lesson is considered, is a database containing information about the characteristics of aircraft of the USSR and Russia, and a database containing information about flights that are operated from Moscow Domodedovo and Sheremetyevo airports.


Gefahrstoffe ◽  
2021 ◽  
Vol 81 (01-02) ◽  
pp. 5-14
Author(s):  
Jan Drzymalla ◽  
Sebastian Theißen ◽  
Jannick Höper ◽  
Deepak Kalathoor ◽  
Andreas Henne

Zur Reduzierung von Feinstaubkonzentrationen in Gebäuden werden bei Raumlufttechnischen Anlagen (RLT-Anlagen) standardmäßig Partikelfilter eingesetzt, die es korrekt auszulegen und auszuwählen gilt. Die vorliegende Studie präsentiert eine aus acht Arbeitsschritten bestehende Methode, die als Entscheidungshilfe Anlagenplaner, -bauer, -betreiber und Ingenieure adressiert und bei der Auslegung und Wahl geeigneter, nach DIN EN ISO 16890 genormter Filter in RLT-Anlagen unterstützt. Zu diesen Arbeitsschritten zählen beispielsweise die Ermittlung der lokalen PMx-Außenluftkonzentration (PM = Particulate Matter, Feinstaub), die Identifizierung des Filteranwendungszwecks oder die Berechnung der Filterabscheideleistung. Unter Anwendung der vorgestellten Methode, wurde zudem das Filterauslegungstool AIRePMx entwickelt, an dem exemplarisch ein typischer Filterauslegungsprozess erläutert wird. Grundlage der entwickelten Methode bilden die Normenreihen DIN EN ISO 16890 und DIN EN 16798, die Richtlinienreihe VDI 6022 und die Branchenempfehlung EUROVENT 4/23 sowie Umweltdaten des Umweltbundesamtes (UBA).


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