Publication | Open Access
Video Object Segmentation without Temporal Information
30
Citations
61
References
2018
Year
Scene AnalysisEngineeringMachine LearningVideo ProcessingVideo SummarizationVideo InterpretationVideo Object SegmentationImage AnalysisPattern RecognitionSemantic SegmentationVideo Content AnalysisVideo TransformerMachine VisionVideo UnderstandingDeep LearningComputer VisionVideo SegmentationForeground SegmentationGeneric Semantic Information
Video object segmentation has traditionally relied on temporal consistency, but its performance degrades when smoothness is disrupted by occlusions or missing frames. This study investigates a frame‑independent approach for semi‑supervised video object segmentation, using only the first‑frame mask. The authors introduce OSVOS^SS, a fully‑convolutional network that first transfers generic ImageNet semantics to foreground segmentation and then fine‑tunes on the single annotated object. OSVOS^SS, which incorporates instance‑level semantic cues, achieves the fastest and most accurate results on two recent single‑object datasets and competitive performance on multi‑object benchmarks.
Video Object Segmentation, and video processing in general, has been historically dominated by methods that rely on the temporal consistency and redundancy in consecutive video frames. When the temporal smoothness is suddenly broken, such as when an object is occluded, or some frames are missing in a sequence, the result of these methods can deteriorate significantly. This paper explores the orthogonal approach of processing each frame independently, i.e., disregarding the temporal information. In particular, it tackles the task of semi-supervised video object segmentation: the separation of an object from the background in a video, given its mask in the first frame. We present Semantic One-Shot Video Object Segmentation (OSVOS$^\mathrm {S}$S), based on a fully-convolutional neural network architecture that is able to successively transfer generic semantic information, learned on ImageNet, to the task of foreground segmentation, and finally to learning the appearance of a single annotated object of the test sequence (hence one shot). We show that instance-level semantic information, when combined effectively, can dramatically improve the results of our previous method, OSVOS. We perform experiments on two recent single-object video segmentation databases, which show that OSVOS$^\mathrm {S}$S is both the fastest and most accurate method in the state of the art. Experiments on multi-object video segmentation show that OSVOS$^\mathrm {S}$S obtains competitive results.
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