Recent Progress in Brain and Cognitive Engineering

Part I. Non-invasive Brain-Computer Interface.- Chapter 1. Future directions for brain-machine interfacing technology.- Chapter 2. Brain-Computer Interface for Smart Vehicle: Detection of Braking Intention during Simulated Driving.- Chapter 3. Benefits and limits of multimodal neuroimaging for Brain Computer Interfaces.- Chapter 4. Multifrequency Analysis of Brain-Computer Interfaces.- Part II. Cognitive- and Neural-rehabilitation Engineering.- Chapter 5. Current Trends in Memory Implantation and Rehabilitation.- Chapter 6. Moving Brain Controlled Devices Outside the Lab: Principles and Applications.- Part III. Big Data Neurocomputing.- Chapter 7. Across cultures: a Cognitive and Computational Analysis of Emotional and Conversational Facial Expressions in Germany and Korea.- Chapter 8. Bottom-Up Processing in Complex Scenes: a unifying perspective on segmentation, fixation saliency, candidate regions, base-detail decomposition, and image enhancement.- Chapter 9. Perception-based motion cueing: a Cybernetics approach to motion simulation.- Chapter 10. The other-race effect revisited: no effect for faces varying in race only.- Part IV. Early Diagnosis and Prediction of Neural Diseases.- Chapter 11. Functional neuromonitoring in acquired head injury.- Chapter 12. Diagnostic Optical Imaging Technology and its Principles.- Chapter 13. Detection of Brain Metastases using Magnetic Resonance Imaging.- Chapter 14. Deep Learning in Diagnosis of Brain Disorders.

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