Data, Signal and Image Processing and Applications in Sensors II
Materialtyp:
ArtikelUtgivningsinformation: MDPI - Multidisciplinary Digital Publishing Institute 2024Innehållstyp: - text
- computer
- online resource
- 9783725815616
- 9783725815623
- Technology, Engineering, Agriculture, Industrial processes
- Technology: general issues
- Engineering: general
- Electronics and communications engineering
- Electronics engineering
- 5P-Medicine
- CFRP
- CNN
- Convolutional Neural Network (CNN)
- DTF
- Deep Learning (DL)
- Dempster–Shafer evidence theory
- Doppler radar
- EEG
- EMG
- FMCW laser ranging
- FitzHugh–Nagumo neuron
- Gaussian Naive Bayes (GNB)
- Hellinger distance
- IALM
- IoT devices monitoring
- IoT security
- KNN
- MEG
- Machine Learning (ML)
- PCP
- PD denoising
- PDC
- PHL transform
- PhysioNet motor imagery
- RPCA
- Random Forest (RF)
- Robust PCA
- SVM
- Softmax
- Support Vector Machine (SVM)
- Teager–Kaiser Energy Operator
- Two-Stage Hybrid Model
- VMD
- artificial intelligence
- auditory illusion
- augmented reality
- automation
- autonomic nervous system (ANS)
- blur kernel rendering
- body movement cancelation
- brain effective connectivity
- brain–computer interface
- breathing frequency
- cardiovascular diseases
- cepstral analysis
- classification
- cloud model
- cold pressor task (CPT)
- computer vision
- continuous wave
- continuous wavelet transform (CWT)
- convolutional neural networks
- corona extinction voltage
- cosine similarity
- damage area detection
- damaged old photo
- data embedding
- decision tree
- deep
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With the rapid advances in sensor technology, a vast and ever-growing amount of data in various domains and modalities is readily available. However, presenting raw signal data collected directly from sensors is sometimes inappropriate due to the presence of, for example, noise or distortion, among others. In order to obtain relevant and insightful metrics from sensor signals' data, further enhancement of the sensor signals acquired, such as noise reduction in one-dimensional electroencephalographic (EEG) signals or color correction in endoscopic images, and their analysis via computer-based medical systems, is needed. The processing of the data in themselves and the consequent extraction of useful information are also vital and included in the scope of this Special Issue. This SI of Sensors is aimed at highlighting advances in the development, testing, and application of data, signal, and image processing algorithms and techniques to all types of sensors and sensing methodologies. Experimental and theoretical results along with review papers, in as much detail as possible, are also considered. Some examples of the topics to be covered in this SI include the following: Ambient assisted living; Biomedical signal and image analysis; Machine learning in signal and image processing; Multimodal information processing for healthcare, monitoring, and surveillance; Real-time signal and image processing algorithms and architectures; Remote sensing processing; Sensors and smart sensors for IoT devices; Signal and image processing and understanding; Wearable sensor signal processing and its applications.
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eng
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