研究目的
To solve the problem of false alarm and missed detection of sea target because of cloud obscuring by introducing image defogging methods into object detection networks and proposing the SC-R-CNN structure for accurate ship detection in foggy remote sensing images.
研究成果
The proposed method combining the dehazing preprocessing with the conventional object detection network and using the classification network and the object detection network to constitute a dual-stream identification system improves the accuracy of ship recognition in foggy remote sensing images. The experimental results show that the proposed method is accurate and effective.
研究不足
The study mentions that the AP's value of the houseboat is significantly lower than 40% mainly due to only 589 houseboats as samples, compared to 8,875 cargo ships and 2,398 cruise ships as samples. Additionally, the dimensions of the houseboats are significantly smaller than those of other vessels, making it harder for the deep convolutional neural network to extract the features of a small target.