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Leveraging Object Proposals for Object-Level Change Detection

机译:利用对象级变化检测的对象提案

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Feature-based image differencing is an efficient approach to image change detection, which performs fast enough for self-driving car and robotic applications. Extant approaches typically take local keypoint features as input to the differencing stage. In this study, we aim to extend the differencing stage to consider object-level features. Our object level approach is inspired by recent advances in two independent object-region proposal techniques: supervised object proposal (e.g., YOLO) and unsupervised object proposal (e.g., BING). A difficulty arises from the fact that even state-of-the-art object proposal techniques suffer from misdetections and false alarms. Our key concept is combining the supervised and unsupervised techniques into a common framework that evaluates the likelihood of change at the semantic object level. We address a challenging urban scenario using the publicly available Malaga dataset and experimentally verify that improved change detection performance can be obtained with our approach.
机译:基于特征的图像差异是图像改变检测的有效方法,这足以用于自动驾驶汽车和机器人应用。远端方法通常将本地关键点特征作为输入到差分阶段。在这项研究中,我们的目标是扩展差分阶段以考虑对象级别功能。监督对象提案(例如,YOLO)和无监督对象的提案(例如,BING):我们的对象层次的方法是通过最新进展在两个独立的对象的区域的建议的技术的启发。难以从甚至最先进的对象提案技术遭受误判和误报的事实中遇到的困难。我们的关键概念是将监督和无监督的技术与一个共同框架组合,该框架评估了语义对象级别的变化的可能性。我们使用公开的Malaga数据集解决了一个具有挑战性的城市情景,并通过我们的方法可以通过实验验证改进的变化检测性能。

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