LIBRISTO
LIBROAMANTO
povinné
Staňte se součástí komunity milovníků knih z celého světa a získejte hromadu výhod. Založit účet zdarma
0
Doprava zdarma se Zásilkovnou nad 1 499 Kč
Kurýr DPD 69 PPL shop 49 Balíkovna 69 PPL kurýr 74 PPL box 39 Balíkovna 49 Výdejní místo DPD 49 Zásilkovna 39

Doprava zdarma při nákupu nad 1 499 Kč přes Zásilkovnu nebo PPL Box.

Using Machine Learning for Optical Spectroscopy Data Analysis

Processing Multiple Spatially Resolved Reflection Spectroscopy Data with Continuous Feature Networks

Jazyk AngličtinaAngličtina
Kniha Brožovaná
Kniha Using Machine Learning for Optical Spectroscopy Data Analysis Birk Martin Magnussen
Libristo kód: 48915024
Nakladatelství kassel university press, listopad 2024
Living a healthy lifestyle is an ever-increasing priority. To facilitate such a healthy lifestyle, a... Celý popis
? points 96 b
958
50 % šance Prohledáme celý svět Kdy knihu dostanu?

30 dní na vrácení zboží

Living a healthy lifestyle is an ever-increasing priority. To facilitate such a healthy lifestyle, accurate, quick, and inexpensive feedback on diet quality is essential. Sensors based on multiple spatially resolved reflection spectroscopy aim to provide such feedback. However, current data processing algorithms require highly accurate hardware. This requirement for accuracy causes production costs of the sensors to be too expensive, while the application scope is too small to be viable for end-customers. In order to keep production costs low, new algorithms capable of handling production inaccuracies need to be developed. This thesis proposes such a novel neural network architecture called a continuous feature network. In addition to being wellsuited for the sensor data at hand, continuous feature networks are capable of compensating for sensor inaccuracies. A continuous feature network is also capable of predicting results from an input sample with partially missing data, allowing it to ignore certain production defects. In this thesis, continuous feature networks are proposed, implemented, trained, and investigated using real-world sensor data. To improve training, a novel method for semi-supervised learning based on the available datasets is introduced and evaluated. Based on the ability of the continuous feature network to operate on partially missing data, a novel explainable AI method is introduced, allowing to accurately quantify possible error sources for a measurement. The newly introduced methods are applied to the processing of sensor data, relaxing the requirement for highly accurate sensor hardware while increasing prediction accuracy. This enables a significant reduction in production rejects and thus sensor cost, while also allowing for the detection and prediction of new vitality parameters.

Herečka & Polyglotka
EWA KASP pro
Přehrát video
Ewa Kasp
Libristo má největší výběr cizojazyčné literatury. Proto své knihy kupuji tady.

Informace o knize

Plný název Using Machine Learning for Optical Spectroscopy Data Analysis
Jazyk Angličtina
Vazba Kniha - Brožovaná
Datum vydání 2025
Počet stran 164
EAN 9783737612081
Libristo kód 48915024
Nakladatelství kassel university press
Váha 220
Rozměry 148 x 210
Darujte tuto knihu ještě dnes
Je to snadné
1 Přidejte knihu do košíku a zvolte doručit jako dárek 2 Obratem vám zašleme poukaz 3 Kniha dorazí na adresu obdarovaného

Přihlášení

Přihlaste se ke svému účtu. Ještě nemáte Libristo účet? Vytvořte si ho nyní!

 
povinné
povinné

Nemáte účet? Získejte výhody Libristo účtu!

Díky Libristo účtu budete mít vše pod kontrolou.

Vytvořit Libristo účet