学习使用深度学习在中央凹图像中搜索和检测物体

Beatriz Paula, Plinio Moreno
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引用次数: 0

摘要

人类的视觉系统以不同的分辨率处理图像,视网膜的一小部分中央凹捕捉最高的敏锐度区域,该区域逐渐向视野的外围下降。然而,现有的大多数目标定位方法依赖于图像传感器获取的具有空间不变分辨率的图像,忽略了生物注意机制。作为兴趣池的区域,本研究采用了一种固定预测模型,该模型模拟了人类在目标引导下搜索图像中给定类别的注意力。然后对每个注视点的注视图像进行分类,以确定目标在场景中是否存在。在这个两阶段的管道方法中,我们研究了利用高级或全视特征获得的不同结果,并提供了一个更平滑的固定序列的真值标记函数,更好地考虑了问题的空间结构。最后,我们提出了一种新的双任务模型,能够同时进行注视预测和检测,允许两个任务之间的知识转移。我们得出的结论是,由于这两个任务的互补性,训练过程受益于知识共享,与之前方法的基线分数相比,结果是性能的提高。
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Learning to search for and detect objects in foveal images using deep learning
The human visual system processes images with varied degrees of resolution, with the fovea, a small portion of the retina, capturing the highest acuity region, which gradually declines toward the field of view's periphery. However, the majority of existing object localization methods rely on images acquired by image sensors with space-invariant resolution, ignoring biological attention mechanisms. As a region of interest pooling, this study employs a fixation prediction model that emulates human objective-guided attention of searching for a given class in an image. The foveated pictures at each fixation point are then classified to determine whether the target is present or absent in the scene. Throughout this two-stage pipeline method, we investigate the varying results obtained by utilizing high-level or panoptic features and provide a ground-truth label function for fixation sequences that is smoother, considering in a better way the spatial structure of the problem. Finally, we present a novel dual task model capable of performing fixation prediction and detection simultaneously, allowing knowledge transfer between the two tasks. We conclude that, due to the complementary nature of both tasks, the training process benefited from the sharing of knowledge, resulting in an improvement in performance when compared to the previous approach's baseline scores.
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