通过深度模板匹配的对象级目标选择

S. Kothawade
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引用次数: 1

摘要

检索具有与查询图像中感兴趣对象(OOI)语义相似的对象的图像有许多实际用例。一些例子包括修复失败,如学习模型的假阴性/阳性或减轻数据集中的类不平衡。目标选择任务需要从大规模的未标记数据池中找到相关数据。这种规模的人工采矿是不可行的。此外,OOI通常很小,占用不到1%的图像面积,被遮挡,并且在混乱的场景中与许多语义不同的对象共存。现有的语义图像检索方法通常侧重于挖掘较大尺寸的地理地标,并且/或者需要额外的标记数据,例如具有相似对象的图像/图像对,以挖掘具有通用对象的图像。我们在DNN特征空间中提出了一种快速鲁棒的模板匹配算法,该算法从大量未标记的数据池中检索对象级语义相似的图像。我们将查询图像中OOI周围的区域投影到DNN特征空间中作为模板使用。这使我们的方法能够专注于OOI的语义,而不需要额外的标记数据。在自动驾驶的背景下,我们通过使用目标探测器的故障案例作为OOI来评估系统的目标选择。我们在一个包含220万张图像的大型未标记数据集上证明了它的有效性,并且在挖掘具有小型OOI的图像时显示了高召回率。我们将我们的方法与一种众所周知的语义图像检索方法进行了比较,该方法也不需要额外的标记数据。最后,我们展示了我们的方法是灵活的,可以无缝地检索具有一个或多个语义不同的共同出现的OOI的图像。
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Object-Level Targeted Selection via Deep Template Matching
Retrieving images with objects that are semantically similar to objects of interest (OOI) in a query image has many practical use cases. A few examples include fixing failures like false negatives/positives of a learned model or mitigating class imbalance in a dataset. The targeted selection task requires finding the relevant data from a large-scale pool of unlabeled data. Manual mining at this scale is infeasible. Further, the OOI are often small and occupy less than 1% of image area, are occluded, and co-exist with many semantically different objects in cluttered scenes. Existing semantic image retrieval methods often focus on mining for larger sized geographical landmarks, and/or require extra labeled data, such as images/image-pairs with similar objects, for mining images with generic objects. We propose a fast and robust template matching algorithm in the DNN feature space, that retrieves semantically similar images at the object-level from a large unlabeled pool of data. We project the region(s) around the OOI in the query image to the DNN feature space for use as the template. This enables our method to focus on the semantics of the OOI without requiring extra labeled data. In the context of autonomous driving, we evaluate our system for targeted selection by using failure cases of object detectors as OOI. We demonstrate its efficacy on a large unlabeled dataset with 2.2M images and show high recall in mining for images with small-sized OOI. We compare our method against a well-known semantic image retrieval method, which also does not require extra labeled data. Lastly, we show that our method is flexible and retrieves images with one or more semantically different co-occurring OOI seamlessly.
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