| Literature DB >> 35548778 |
Zuguo Chen1,2,3, Chaoyang Chen1,2, Ming Lu2.
Abstract
The color image of the fire hole is key for the working condition identification of the aluminum electrolysis cell (AEC). However, the image of the fire hole is difficult for image segmentation due to the nonuniform distributed illuminated background and oblique beam radiation. Thus, a joint dual channel convolution kernel (DCCK) and multi-frame feature fusion (MFF) method is developed to achieve dynamic fire hole video image segmentation. Considering the invalid or extra texture disturbances in the edge feature images, the DCCK is used to select the effective edge features. Since the obtained edge features of the fire hole are not completely closed, the MFF algorithm is further applied to complement the missing portion of the edge. This method can assist to obtain the complete fire hole image of the AEC. The experiment results demonstrate that the proposed method has higher precision, recall rate, and lower boundary redundancy rate with well segmented image edge for the aid of working condition identification of the AEC.Entities:
Keywords: aluminum electrolysis cell; dual channel convolution kernel; dynamic video image segmentation; fire hole; multi-frame feature fusion
Year: 2022 PMID: 35548778 PMCID: PMC9084455 DOI: 10.3389/fnbot.2022.845858
Source DB: PubMed Journal: Front Neurorobot ISSN: 1662-5218 Impact factor: 2.650
Figure 1The obtained edge feature images (Prewitt operator). (A) The original image of the fire hole. (B) The gray image of the fire hole. (C) The obtained edge feature image.
Figure 2The image processed with different convolutional kernels.
Figure 3The illustration of the continuous pixel labeling. (A) The image processed with a 4 × 4 convolutional kernal. (B) The image processed with a 6 × 6 convolutional kernal. (C) The processed image with double channel convolutional kernal.
The multiplication process of the pixel values.
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Figure 4The flow chart of the edge feature continuity processing.
Figure 5Final separated result of the fire hole. (A) The processed previous frame edge image. (B) Matching diagram of the edge image. (C) The overlapped part of the two images. (D) The missing part of the next frame image. (E) The continuous edge feature image. (F) Final separated result of the fire hole.
The corresponding relationship of the substract processing.
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The corresponding relationship of the superimpose processing.
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Figure 6The segmentation results with different algorithms for comparison. (A) Original image. (B) Gray-scale map image. (C) Prewitt operator. (D) Roberts operator. (E) Canny operator. (F) Funny-sobel operator. (G) Sobel operator. (H) Bilateral filter based Canny operator. (I) The proposed algorithm.
The evaluation indexes of the image segmentation with different algorithms comparison.
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| Canny operator | 0.0429 | 0.0598 | 0.0179 |
| Bilateral filter based | 0.1676 | 0.2851 | 0.8554 |
| Fuzzy sobel operator | 0.4151 | 0.6530 | 1.9591 |
| Roberts operator | 0.4430 | 0.5464 | 1.6391 |
| Prewitt operator | 0.5363 | 0.5962 | 1.7886 |
| Sobel operator |
| 0.5613 | 1.6839 |
| The proposed algorithm | 0.5132 |
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Bold value means that these values are the best.