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Learning to Segment Object Candidates via Recursive Neural Networks

机译:通过递归神经网络学习分割对象候选对象

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摘要

To avoid the exhaustive search over locations and scales, current state-of-the-art object detection systems usually involve a crucial component generating a batch of candidate object proposals from images. In this paper, we present a simple yet effective approach for segmenting object proposals via a deep architecture of recursive neural networks (ReNNs), which hierarchically groups regions for detecting object candidates over scales. Unlike traditional methods that mainly adopt fixed similarity measures for merging regions or finding object proposals, our approach adaptively learns the region merging similarity and the objectness measure during the process of hierarchical region grouping. Specifically, guided by a structured loss, the ReNN model jointly optimizes the cross-region similarity metric with the region merging process as well as the objectness prediction. During inference of the object proposal generation, we introduce randomness into the greedy search to cope with the ambiguity of grouping regions. Extensive experiments on standard benchmarks, e.g., PASCAL VOC and ImageNet, suggest that our approach is capable of producing object proposals with high recall while well preserving the object boundaries and outperforms other existing methods in both accuracy and efficiency.
机译:为了避免详尽搜索位置和比例,当前最新的对象检测系统通常包含一个关键组件,该关键组件会从图像生成一批候选对象建议。在本文中,我们提出了一种通过递归神经网络(ReNNs)的深层结构来分割对象建议的简单而有效的方法,该方法将区域进行分层分组以检测尺度上的候选对象。与主要采用固定相似性度量进行区域合并或查找对象提议的传统方法不同,我们的方法在分层区域分组过程中自适应地学习区域合并相似性和对象度量。具体来说,在结构化损失的指导下,ReNN模型通过区域合并过程以及客观性预测共同优化跨区域相似性度量。在对象提议生成的推论过程中,我们将贪婪性引入随机性以应对分组区域的歧义。在PASCAL VOC和ImageNet等标准基准上进行的大量实验表明,我们的方法能够生成具有较高召回率的对象建议,同时可以很好地保留对象边界,并且在准确性和效率上都优于其他现有方法。

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