Semantic Segmentation of Smartphone Wound Images: Comparative Analysis of AHRF and CNN-Based Approaches

被引:0
|
作者
Wagh, Ameya [1 ]
Jain, Shubham [2 ]
Mukherjee, Apratim [3 ]
Agu, Emmanuel [4 ]
Pedersen, Peder C. [4 ]
Strong, Diane [4 ]
Tulu, Bengisu [4 ]
Lindsay, Clifford [5 ]
Liu, Ziyang [4 ]
机构
[1] TORC Robot, Blacksburg, VA 24060 USA
[2] Nvidia Corp, Santa Clara, CA 95051 USA
[3] Manipal Inst Technol, Dept Comp Sci, Manipal 576104, India
[4] Worcester Polytech Inst, Dept Comp Sci, Worcester, MA 01609 USA
[5] Univ Massachusetts, Sch Med, Dept Radiol, Worcester, MA 01655 USA
关键词
Wounds; Image segmentation; Machine learning; Semantics; Feature extraction; Task analysis; Skin; Wound image analysis; semantic segmentation; chronic wounds; U-Net; FCN; DeepLabV3; associative hierarchical random fields; convolutional neural network; contrast limited adaptive histogram equalization; ULCERS;
D O I
10.1109/ACCESS.2020.3014175
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Smartphone wound image analysis has recently emerged as a viable way to assess healing progress and provide actionable feedback to patients and caregivers between hospital appointments. Segmentation is a key image analysis step, after which attributes of the wound segment (e.g. wound area and tissue composition) can be analyzed. The Associated Hierarchical Random Field (AHRF) formulates the image segmentation problem as a graph optimization problem. Handcrafted features are extracted, which are then classified using machine learning classifiers. More recently deep learning approaches have emerged and demonstrated superior performance for a wide range of image analysis tasks. FCN, U-Net and DeepLabV3 are Convolutional Neural Networks used for semantic segmentation. While in separate experiments each of these methods have shown promising results, no prior work has comprehensively and systematically compared the approaches on the same largewound image dataset, or more generally compared deep learning vs non-deep learning wound image segmentation approaches. In this paper, we compare the segmentation performance of AHRF and CNN approaches (FCN, U-Net, DeepLabV3) using various metrics including segmentation accuracy (dice score), inference time, amount of training data required and performance on diverse wound sizes and tissue types. Improvements possible using various image pre- and post-processing techniques are also explored. As access to adequate medical images/data is a common constraint, we explore the sensitivity of the approaches to the size of the wound dataset. We found that for small datasets (<300 images), AHRF is more accurate than U-Net but not as accurate as FCN and DeepLabV3. AHRF is also over 1000x slower. For larger datasets (>300 images), AHRF saturates quickly, and all CNN approaches (FCN, U-Net and DeepLabV3) are significantly more accurate than AHRF.
引用
收藏
页码:181590 / 181604
页数:15
相关论文
共 50 条
  • [1] Analysis and Optimization of CNN-based Semantic Segmentation of Satellite Images
    Im, Heeji
    Yang, Hoeseok
    2019 10TH INTERNATIONAL CONFERENCE ON INFORMATION AND COMMUNICATION TECHNOLOGY CONVERGENCE (ICTC): ICT CONVERGENCE LEADING THE AUTONOMOUS FUTURE, 2019, : 218 - 220
  • [2] Optimal CNN-based semantic segmentation model of cutting slope images
    LIN Mansheng
    TENG Shuai
    CHEN Gongfa
    LV Jianbing
    HAO Zhongyu
    Frontiers of Structural and Civil Engineering, 2022, 16 (04) : 414 - 433
  • [3] Optimal CNN-based semantic segmentation model of cutting slope images
    Lin, Mansheng
    Teng, Shuai
    Chen, Gongfa
    Lv, Jianbing
    Hao, Zhongyu
    FRONTIERS OF STRUCTURAL AND CIVIL ENGINEERING, 2022, 16 (04) : 414 - 433
  • [4] Optimal CNN-based semantic segmentation model of cutting slope images
    Mansheng Lin
    Shuai Teng
    Gongfa Chen
    Jianbing Lv
    Zhongyu Hao
    Frontiers of Structural and Civil Engineering, 2022, 16 : 414 - 433
  • [5] A comparative study on CNN-based semantic segmentation of intertidal mussel beds
    Gu, Yi-Fei
    Hu, Jiaxin
    Williams, Gray A.
    ECOLOGICAL INFORMATICS, 2023, 75
  • [6] Evaluating CNN-Based Semantic Food Segmentation Across Illuminants
    Ciocca, Gianluigi
    Mazzini, Davide
    Schettini, Raimondo
    COMPUTATIONAL COLOR IMAGING, CCIW 2019, 2019, 11418 : 247 - 259
  • [7] CNN-based Semantic Segmentation using Level Set Loss
    Kim, Youngeun
    Kim, Seunghyeon
    Kim, Taekyung
    Kim, Changick
    2019 IEEE WINTER CONFERENCE ON APPLICATIONS OF COMPUTER VISION (WACV), 2019, : 1752 - 1760
  • [8] A guide to CNN-based dense segmentation of neuronal EM images
    Urakubo, Hidetoshi
    MICROSCOPY, 2025,
  • [9] CNN-based Fisheye Image Real-Time Semantic Segmentation
    Saez, Alvaro
    Bergasa, Luis M.
    Romera, Eduardo
    Lopez, Elena
    Barea, Rafael
    Sanz, Rafael
    2018 IEEE INTELLIGENT VEHICLES SYMPOSIUM (IV), 2018, : 1039 - 1044
  • [10] IMPROVING CNN-BASED BUILDING SEMANTIC SEGMENTATION USING OBJECT BOUNDARIES
    Alexakis, E. Bousias
    Armenakis, C.
    XXIV ISPRS CONGRESS: IMAGING TODAY, FORESEEING TOMORROW, COMMISSION III, 2022, 43-B3 : 41 - 48