YOLO-CORE:高效实例分割的轮廓回归

IF 6.4 4区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Machine Intelligence Research Pub Date : 2023-09-15 DOI:10.1007/s11633-022-1379-3
Haoliang Liu, Wei Xiong, Yu Zhang
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引用次数: 0

摘要

实例分割由于其重要的实用性而引起了越来越多的关注。然而,由于实例掩码通常是通过像素级标记来实现的,因此该领域的计算成本很高。在本文中,我们提出了一个概念上高效的轮廓回归网络,基于你只看一次(YOLO)架构,命名为YOLO- core,用于实例分割。利用我们设计的由极距离损失和扇形损失组成的多阶约束,通过显式和直接的轮廓回归有效地获取实例的掩码。我们提出的YOLO-CORE在准确性和速度方面都具有令人印象深刻的分割性能。它在语义边界数据集(SBD)上达到57.9% AP@0.5和47 FPS(帧/秒),在COCO数据集上达到51.1% AP@0.5和46 FPS。显式轮廓回归方法所取得的优异性能为基于yolo的图像理解领域开辟了一条新的技术路线。此外,我们的实例分割设计可以灵活地集成到现有的深度检测器中,计算成本可以忽略(65.86 BFLOPs(每秒十亿次浮点运算)到使用YOLOv3检测器的66.15 BFLOPs)。
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YOLO-CORE: Contour Regression for Efficient Instance Segmentation
Instance segmentation has drawn mounting attention due to its significant utility. However, high computational costs have been widely acknowledged in this domain, as the instance mask is generally achieved by pixel-level labeling. In this paper, we present a conceptually efficient contour regression network based on the you only look once (YOLO) architecture named YOLO-CORE for instance segmentation. The mask of the instance is efficiently acquired by explicit and direct contour regression using our designed multi-order constraint consisting of a polar distance loss and a sector loss. Our proposed YOLO-CORE yields impressive segmentation performance in terms of both accuracy and speed. It achieves 57.9% AP@0.5 with 47 FPS (frames per second) on the semantic boundaries dataset (SBD) and 51.1% AP@0.5 with 46 FPS on the COCO dataset. The superior performance achieved by our method with explicit contour regression suggests a new technique line in the YOLO-based image understanding field. Moreover, our instance segmentation design can be flexibly integrated into existing deep detectors with negligible computation cost (65.86 BFLOPs (billion float operations per second) to 66.15 BFLOPs with the YOLOv3 detector).
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