Advanced Medical Biometrics
暫譯: 進階醫療生物識別技術

Zhang David

  • 出版商: World Scientific Pub
  • 出版日期: 2026-02-06
  • 售價: $5,300
  • 貴賓價: 9.5$5,035
  • 語言: 英文
  • 頁數: 326
  • 裝訂: Hardcover - also called cloth, retail trade, or trade
  • ISBN: 9819817463
  • ISBN-13: 9789819817467
  • 相關分類: 影像辨識 Image-recognition
  • 海外代購書籍(需單獨結帳)

商品描述

In brief, this book provides the advanced sensing technologies including multi-sensor collaborative sensing for pulse signal acquisition, sensor array design for breath odor perception, and voice signal acquisition. Besides, this book summarizes the advances about pulse feature extraction with improved Gabor function, odor feature extraction based on de-convolution methods.

This book also presents the latest recognition methods including evolutionary ensemble model to handle the imbalance problem, multi-feature complementary methods for face image, tongue images, and pulse analysis. Multi-modal hybrid fusion and self-adaptive score fusion for disease classification are proposed and proved effective for medical biometrics.

Medical biometrics achieves disease detection and health monitor by sensing and recognizing multi-modal body surface information. It is believed that body surface information, e.g., face, tongue, breath odor, voice, and wrist pulse, is one of the most important biometric features that contains rich pathological information and can be used for health assessments or disease detection. Focusing on the latest progresses in medical biometrics, this book systematically presents advanced signal acquisition techniques, feature extraction methods, and recognition algorithms.

Both researchers and engineers in pattern recognition and medical diagnosis will benefit from this book as it offers comprehensive understanding of the advanced signal acquisition techniques, related feature extraction methods, and state-of-the-art analysis methods.

商品描述(中文翻譯)

簡而言之,本書提供了先進的感測技術,包括用於脈搏信號獲取的多感測器協作感測、用於呼吸氣味感知的感測器陣列設計以及聲音信號獲取。此外,本書總結了改進的Gabor函數在脈搏特徵提取方面的進展,以及基於去卷積方法的氣味特徵提取。

本書還介紹了最新的識別方法,包括進化集成模型以處理不平衡問題,針對面部影像、舌頭影像和脈搏分析的多特徵互補方法。提出了多模態混合融合和自適應分數融合用於疾病分類,並證明對醫療生物識別有效。

醫療生物識別通過感測和識別多模態的身體表面信息來實現疾病檢測和健康監測。相信身體表面信息,例如面部、舌頭、呼吸氣味、聲音和手腕脈搏,是最重要的生物識別特徵之一,包含豐富的病理信息,可用於健康評估或疾病檢測。本書專注於醫療生物識別的最新進展,系統地介紹了先進的信號獲取技術、特徵提取方法和識別算法。

本書將使模式識別和醫療診斷領域的研究人員和工程師受益,因為它提供了對先進信號獲取技術、相關特徵提取方法和最先進分析方法的全面理解。