This paper aims to improve the Warping Planer Object Detection Network (WPOD-Net) using feature engineering to increase accuracy. What problems are solved using the Warping Object Detection Network using feature engineering? More specifically, we think that it makes sense to add knowledge about edges in the image to enhance the information for determining the license plate contour of the original WPOD-Net model. The Sobel filter has been selected experimentally and acts as a Convolutional Neural Network layer, the edge information is combined with the old information of the original network to create the final embedding vector. The proposed model was compared with the original model on a set of data that we collected for evaluation. The results are evaluated through the Quadrilateral Intersection over Union value and demonstrate that the model has a significant improvement in performance.
翻译:本文的目的是利用地物工程来改进扭曲板块物体探测网(WPOD-Net),提高准确性。使用地物工程来消除哪些问题?更具体地说,我们认为,增加图像边缘知识,以加强信息,以确定原WPOD-Net模型的车牌轮廓轮廓。Sobel过滤器是实验性挑选的,作为连动神经网络层,边缘信息与原始网络的旧信息相结合,以创建最终嵌入矢量。拟议模型与我们收集用于评估的一组数据的原始模型进行了比较。结果通过跨联盟价值的四方间截面进行评估,并表明该模型的性能有显著改善。