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ParticleSeg3D: A Scalable Out-of-the-Box Deep Learning Segmentation Solution for Individual Particle Characterization from Micro CT Images in Mineral Processing and Recycling (2301.13319v4)

Published 30 Jan 2023 in cs.CV

Abstract: Minerals, metals, and plastics are indispensable for a functioning modern society. Yet, their supply is limited causing a need for optimizing ore extraction and recuperation from recyclable materials.Typically, those processes must be meticulously adapted to the precise properties of the processed materials. Advancing our understanding of these materials is thus vital and can be achieved by crushing them into particles of micrometer size followed by their characterization. Current imaging approaches perform this analysis based on segmentation and characterization of particles imaged with computed tomography (CT), and rely on rudimentary postprocessing techniques to separate touching particles. However, their inability to reliably perform this separation as well as the need to retrain methods for each new image, these approaches leave untapped potential to be leveraged. Here, we propose ParticleSeg3D, an instance segmentation method able to extract individual particles from large CT images of particle samples containing different materials. Our approach is based on the powerful nnU-Net framework, introduces a particle size normalization, uses a border-core representation to enable instance segmentation, and is trained with a large dataset containing particles of numerous different sizes, shapes, and compositions of various materials. We demonstrate that ParticleSeg3D can be applied out-of-the-box to a large variety of particle types, including materials and appearances that have not been part of the training set. Thus, no further manual annotations and retraining are required when applying the method to new particle samples, enabling substantially higher scalability of experiments than existing methods. Our code and dataset are made publicly available.

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References (44)
  1. A fusion biopsy framework for prostate cancer based on deformable superellipses and nnu-net. Bioengineering 9, 343.
  2. Computing particle size distribution of mineral rocks using deep learning-based instance segmentation, in: 2022 10th European Workshop on Visual Information Processing (EUVIP), IEEE. pp. 1–6.
  3. X-ray computed tomography: A geometallurgical tool for 3d textural analysis of drill core. See AusIMM (2016) , 231–240.
  4. Uncertainties in quantitative mineralogical studies using scanning electron microscope-based image analysis. Minerals Engineering 167, 106836.
  5. Evaluation of recyclability of a weee slag by means of integrative x-ray computer tomography and sem-based image analysis. Minerals 10, 309.
  6. Segmentation of lipid droplets in histological images, in: Medical Imaging with Deep Learning, short paper track.
  7. Characterisation of gold ores by x-ray computed tomography–part 2: Applications to the determination of gold particle size and distribution, in: Proceedings of the First AusIMM International Geometallurgy Conference, Brisbane, Australia, pp. 5–7.
  8. Mass detection and segmentation in digital breast tomosynthesis using 3d-mask region-based convolutional neural network: a comparative analysis. Frontiers in molecular biosciences 7, 599333.
  9. Deep learning semantic segmentation of opaque and non-opaque minerals from epoxy resin in reflected light microscopy images. Minerals Engineering 170, 107007.
  10. Multidimensional characterization of particle morphology and mineralogical composition using ct data and r-vine copulas. arXiv preprint arXiv:2301.07587 .
  11. Volume quantification in interphase voxels of ore minerals using 3d imaging. Minerals Engineering 144, 106016.
  12. Mounted single particle characterization for 3d mineralogical analysis—mspacman. Minerals 11, 947.
  13. 3d quantitative mineral characterization of particles using x-ray computed tomography. Natural Resources Research 32, 479–499.
  14. Self-configuring nnu-nets detect clouds in satellite images. arXiv preprint arXiv:2210.13659 .
  15. Development and experimental validation of a texture-based 3d liberation model. Minerals Engineering 164, 106828.
  16. Nondestructive characterisation of the effect of asphalt mixture compaction on aggregate orientation and segregation using x-ray computed tomography. International Journal of Pavement Research and Technology 5, 84.
  17. nnu-net: a self-configuring method for deep learning-based biomedical image segmentation. Nature methods 18, 203–211.
  18. Brain tumor segmentation using 3d mask r-cnn for dynamic susceptibility contrast enhanced perfusion imaging. Physics in Medicine & Biology 65, 185009.
  19. Characterisation of fracture evolution of a single cemented brittle grain using in-situ x-ray computed tomography. International Journal of Rock Mechanics and Mining Sciences 145, 104835.
  20. Integration of x-ray radiography and automated mineralogy data for the optimization of ore sorting routines. Minerals Engineering 186, 107739.
  21. The inherent link between ore formation and geometallurgy as documented by complex tin mineralization at the hämmerlein deposit (erzgebirge, germany). Mineralium Deposita 54, 683–698.
  22. Lung nodules detection and segmentation using 3d mask-rcnn. arXiv preprint arXiv:1907.07676 .
  23. Deep-learning-based automatic mineral grain segmentation and recognition. Minerals 12, 455.
  24. An unsupervised concrete crack detection method based on nnu-net, in: The International Conference on Image, Vision and Intelligent Systems (ICIVIS 2021), Springer. pp. 609–623.
  25. Ore image segmentation method using u-net and res_unet convolutional networks. RSC advances 10, 9396–9406.
  26. Efficient image segmentation based on deep learning for mineral image classification. Advanced Powder Technology 32, 3885–3903.
  27. Image segmentation method on quartz particle-size detection by deep learning networks. Minerals 12, 1479.
  28. A self-adaptive particle-tracking method for minerals processing. Journal of Cleaner Production 279, 123711.
  29. napari: a multi-dimensional image viewer for python. Zenodo .
  30. nnunet meets pathology: bridging the gap for application to whole-slide images and computational biomarkers, in: Medical Imaging with Deep Learning.
  31. Efficient and lightweight framework for real-time ore image segmentation based on deep learning. Minerals 12, 526.
  32. Particle classification of iron ore sinter green bed mixtures by 3d x-ray microcomputed tomography and machine learning. Powder Technology 415, 118151.
  33. Deep-xfct: Deep learning 3d-mineral liberation analysis with micro-x-ray fluorescence and computed tomography. Energies 15, 5326.
  34. scikit-image: image processing in python. PeerJ 2, e453.
  35. Deepigeos: a deep interactive geodesic framework for medical image segmentation. IEEE transactions on pattern analysis and machine intelligence 41, 1559–1572.
  36. Nodule-plus r-cnn and deep self-paced active learning for 3d instance segmentation of pulmonary nodules. Ieee Access 7, 128796–128805.
  37. An improved boundary-aware u-net for ore image semantic segmentation. Sensors 21, 2615.
  38. Improved 3d image segmentation for x-ray tomographic analysis of packed particle beds. Minerals Engineering 83, 185–191.
  39. 3d image segmentation for analysis of multisize particles in a packed particle bed. Powder Technology 301, 160–168.
  40. A particle-based approach to predict the success and selectivity of leaching processes using ethaline-comparison of simulated and experimental results. Hydrometallurgy 211, 105869.
  41. An ore image segmentation method based on rdu-net model. Sensors 20, 4979.
  42. Voxelembed: 3d instance segmentation and tracking with voxel embedding based deep learning, in: Machine Learning in Medical Imaging: 12th International Workshop, MLMI 2021, Held in Conjunction with MICCAI 2021, Strasbourg, France, September 27, 2021, Proceedings 12, Springer. pp. 437–446.
  43. Deep learning based instance segmentation in 3d biomedical images using weak annotation, in: Medical Image Computing and Computer Assisted Intervention–MICCAI 2018: 21st International Conference, Granada, Spain, September 16-20, 2018, Proceedings, Part IV 11, Springer. pp. 352–360.
  44. Three-dimensional characterization of powder particles using x-ray computed tomography. Additive Manufacturing 40, 101913.
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