Fine-grained sketch-based image retrieval (FG-SBIR) addresses the problem of retrieving a particular photo in a given query sketch. However, its widespread applicability is limited by the fact that it is difficult to draw a complete sketch for most people, and the drawing process often takes time. In this study, we aim to retrieve the target photo with the least number of strokes possible (incomplete sketch), named on-the-fly FG-SBIR (Bhunia et al. 2020), which starts retrieving at each stroke as soon as the drawing begins. We consider that there is a significant correlation among these incomplete sketches in the sketch drawing episode of each photo. To learn more efficient joint embedding space shared between the photo and its incomplete sketches, we propose a multi-granularity association learning framework that further optimizes the embedding space of all incomplete sketches. Specifically, based on the integrity of the sketch, we can divide a complete sketch episode into several stages, each of which corresponds to a simple linear mapping layer. Moreover, our framework guides the vector space representation of the current sketch to approximate that of its later sketches to realize the retrieval performance of the sketch with fewer strokes to approach that of the sketch with more strokes. In the experiments, we proposed more realistic challenges, and our method achieved superior early retrieval efficiency over the state-of-the-art methods and alternative baselines on two publicly available fine-grained sketch retrieval datasets.
翻译:精细的草图图像检索(FG-SBIR)解决了在特定查询草图中重新获取特定照片的问题(FG-SBIR),然而,由于很难为大多数人绘制完整的草图,而且绘图过程往往需要时间,因此其广泛适用性受到限制。在本研究中,我们的目标是以尽可能少的中风(不完整草图)来检索目标照片,在FG-SBIR(Bhunia等人,2020年)上点名,在绘制工作开始时,开始在每次中风中检索。我们认为,在每张照片的草图插图插图中,这些不完整的草图之间有着重要的关联性。要学习在照片及其不完整草图之间共享的更高效的联合嵌入空间,我们建议一个多光度协会学习框架,进一步优化所有不完整草图的嵌入空间。具体地说,根据草图的完整性,我们可以将完整的草图插图分几个阶段,每个阶段都对应一个简单的线性绘图层。此外,我们的框架将当前草图中的矢量空间缩图示表与更接近于更精确的草图,即我们较晚的草图绘制方法,我们更接近了更接近于更接近的平的平的平的平的平局。