Semi-supervised video object segmentation (VOS) aims to track the designated objects present in the initial frame of a video at the pixel level. To fully exploit the appearance information of an object, pixel-level feature matching is widely used in VOS. Conventional feature matching runs in a surjective manner, i.e., only the best matches from the query frame to the reference frame are considered. Each location in the query frame refers to the optimal location in the reference frame regardless of how often each reference frame location is referenced. This works well in most cases and is robust against rapid appearance variations, but may cause critical errors when the query frame contains background distractors that look similar to the target object. To mitigate this concern, we introduce a bijective matching mechanism to find the best matches from the query frame to the reference frame and vice versa. Before finding the best matches for the query frame pixels, the optimal matches for the reference frame pixels are first considered to prevent each reference frame pixel from being overly referenced. As this mechanism operates in a strict manner, i.e., pixels are connected if and only if they are the sure matches for each other, it can effectively eliminate background distractors. In addition, we propose a mask embedding module to improve the existing mask propagation method. By embedding multiple historic masks with coordinate information, it can effectively capture the position information of a target object.
翻译:半监督的视频对象分割( VOS) 旨在跟踪像素级视频图像初始框架初始框中显示的指定对象。 要充分利用对象的外观信息, VOS 将广泛使用像素级的特性匹配。 常规特征匹配以推测方式运行, 即只有查询框架至参考框架的最佳匹配。 查询框架中的每个位置都指参考框中的最佳位置, 不论引用每个引用框架位置的频率多高。 这在多数情况下都很有效, 并且能够抵御快速的外观变异, 但当查询框架包含与目标对象对象相似的背景偏移器时, 可能会造成严重错误。 为了减轻这一关切, 我们引入双导匹配机制, 从查询框架找到与引用框架的最佳匹配, 也就是说, 只有找到查询框架像素的最佳匹配点, 查询框架像素的每个位置首先被考虑最佳匹配, 防止每个引用框架像素被过度引用。 由于此机制运行方式严格, 也就是说, 将目标的偏差点与与目标偏移器相连接, 只要它们能够有效地连接, 并且只有我们为每个变换后方格式格式格式, 。