论文标题
使用基于草图的深度学习和转移学习图图像检索图像
Diagram Image Retrieval using Sketch-Based Deep Learning and Transfer Learning
论文作者
论文摘要
图像图像图像图像图像的复杂问题的分辨率尚未达到。深度学习方法继续在应用于自然图像的对象检测和图像分类领域中表现出色。但是,由于缺乏质地,颜色和强度信息等关键特征,应用于二进制图像的这种方法的应用仍然有限。本文通过利用现有的大型自然图像存储库来用于图像搜索和基于素描的方法(草图与图表并不相同,但它们确实具有一些特征;例如,这两种成像类型都是灰度(二进制),由轮廓组成,并且在纹理中缺乏)。 我们首先使用深度学习来从自然图像中生成草图进行图像检索,然后在草图上训练第二个深度学习模型。然后,我们通过转移学习使用一组手动标记的专利图图像,以使图像搜索从自然图像的草图中调整为图。我们的实验结果表明,通过转移学习,深度学习的有效性用于检测专利图像中几乎相同的副本,并根据内容查询相似的图像。
Resolution of the complex problem of image retrieval for diagram images has yet to be reached. Deep learning methods continue to excel in the fields of object detection and image classification applied to natural imagery. However, the application of such methodologies applied to binary imagery remains limited due to lack of crucial features such as textures,color and intensity information. This paper presents a deep learning based method for image-based search for binary patent images by taking advantage of existing large natural image repositories for image search and sketch-based methods (Sketches are not identical to diagrams, but they do share some characteristics; for example, both imagery types are gray scale (binary), composed of contours, and are lacking in texture). We begin by using deep learning to generate sketches from natural images for image retrieval and then train a second deep learning model on the sketches. We then use our small set of manually labeled patent diagram images via transfer learning to adapt the image search from sketches of natural images to diagrams. Our experiment results show the effectiveness of deep learning with transfer learning for detecting near-identical copies in patent images and querying similar images based on content.