2019
DOI: 10.3788/co.20191204.0888
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Fast recognition and classification of tetrazole compounds based on laser-induced breakdown spectroscopy and raman spectroscopy

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Cited by 5 publications
(5 citation statements)
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“…Table 2 shows that the segmentation result of the improved algorithm was the smallest of all the algorithms, which shows that the segmentation result of the improved algorithm was closer to the ideal segmentation result and had a better segmentation performance. Comparing the PSNR and iteration time of each algorithm in Table 3, the average PSNR of the improved algorithm was 0.7 dB higher than that of the KWFLICM algorithm, and the average iteration time of the improved algorithm was 500 s less than that of the KWFLICM algorithm [42,43]. The iteration times of the FCM_S and FLICM algorithms were the lowest, but the difference between the improved algorithm results and the PSNR was 2-5 dB.…”
Section: Segmentation Performance Testmentioning
confidence: 96%
“…Table 2 shows that the segmentation result of the improved algorithm was the smallest of all the algorithms, which shows that the segmentation result of the improved algorithm was closer to the ideal segmentation result and had a better segmentation performance. Comparing the PSNR and iteration time of each algorithm in Table 3, the average PSNR of the improved algorithm was 0.7 dB higher than that of the KWFLICM algorithm, and the average iteration time of the improved algorithm was 500 s less than that of the KWFLICM algorithm [42,43]. The iteration times of the FCM_S and FLICM algorithms were the lowest, but the difference between the improved algorithm results and the PSNR was 2-5 dB.…”
Section: Segmentation Performance Testmentioning
confidence: 96%
“…This study aims to classify and analyze soil samples from different regions using laser-induced breakdown spectroscopy technology and K-Nearest Neighbor algorithm. The study provides strong scientific and technical support for soil pollution control [12] . The research outcome is expected to provide new ideas and paths for soil pollution control and contribute to the construction of an ecological civilization and sustainable development.…”
Section: Introductionmentioning
confidence: 94%
“…To further improve the anti-noise robustness of the algorithm, the noise smoothing factor is embedded in the adaptive feature selection robust fuzzy clustering segmentation algorithm, and a new Gaussian hybrid algorithm for neighbourhood information feature selection is obtained [35][36][37].…”
Section: Adaptive Fsmm Fuzzy Clustering Image Segmentation Algorithm mentioning
confidence: 99%