Sensor Data Understanding

Farid-Khan

Uploader
LV
5
 
Csatlakozás
2023.06.08.
Üzenetek
24,320
Reakció pontszám
174
Díjak
6
Kor
36
md6sl031oqcw.jpg
Sensor Data Understanding | 238 | Grzegorzek, Marcin;
2017 | Logos Verlag Berlin | 3832546332​

The rapid development in the area of sensor technology has been responsible for a number of societal phenomena like UGC (User Generated Content) or QS (Quantified Self). Machine learning algorithms benefit a lot from the availability of such huge volumes of digital data. For example, new technical solutions for challenges caused by the demographic change (ageing society) can be proposed in this way, especially in the context of healthcare systems in industrialised countries. The goal of this book is to present selected algorithms for Visual Scene Analysis (VSA, processing UGC) as well as for Human Data Interpretation (HDI, using data produced within the QS movement) and to expose a joint methodological basis between these two scientific directions. While VSA approaches have reached impressive robustness towards human-like interpretation of visual sensor data, HDI methods are still of limited semantic abstraction power. Using selected state-of-the-art examples, this book shows the maturity of approaches towards closing the semantic gap in both areas, VSA and HDI.

Contents of Download:
Sensor Data Understanding.pdf (16.07 MB)


RapidGator Link(s)
Code:
            
                
                
                    
                   
                    A kód megtekintéséhez jelentkezz be.
					Please log in to view the code.
                
            
        
NitroFlare Link(s) (This link is only available for premium members)
Code:
            
                
                
                    
                   
                    A kód megtekintéséhez jelentkezz be.
					Please log in to view the code.
                
            
        
 
Top Alul