- 3.3Impact Factor
- 6.7CiteScore
- 16 daysTime to First Decision
Journal of Imaging, Volume 4, Issue 6
June 2018 - 10 articles
Cover Story: Deep neural network-based background subtraction (DNN-BS) has demonstrated excellent performance for change detection. However, previous works fail to detail why DNN-BSs work well. This discussion helps to improve DNN-BSs. For investigation of DNN-BSs, we observed feature maps in all layers of a DNN-BS directly, and we found important filters for the detection accuracy by removing specific filters from the DNN-BS. From the analysis, we found that the DNN-BS consists of subtraction operations in convolutional layers and thresholding operations in bias layers and scene-specific filters are generated to suppress false positives from dynamic backgrounds. View Paper here.
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