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Integration of bottom-up and top-down cues in Bayesian network for object detection

机译:贝叶斯网络中自下而上和自上而下的线索的集成,用于对象检测

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Automatic detection of objects in cluttered images involves a lot of uncertainty, and has been a great challenge in computer vision. However, humans can easily find their interested objects via the mechanisms of visual selective attention. Inspired by this, a visual attention model which integrates bottom-up and top-down cues in the Bayesian network is proposed. In this model, the bottom-up color and shape cues are combined with the top-down color and shape priors, and all these cues are related with their locations, simulating the convergence of bottom-up and top-down cues in visual area V4 of human visual system. Then, a Bayesian network is constructed according to these cues, and each cue is represented as a node in the network. Finally, a saliency map about localizing the target objects is created through the inference in the Bayesian network. The uncertainty in object detection is reduced by the inference greatly. The experiments show that this model can detect interested objects in images with complex backgrounds, even if the objects have different sizes, colors or shapes, and appear in different places of an image. In comparison with the results of famous Itti's visual attention model, the advantage of our model is that it can obtain the contours of objects, which is very helpful for further process of object recognition.
机译:自动检测杂乱图像中的对象会带来很多不确定性,并且一直是计算机视觉中的巨大挑战。但是,人类可以通过视觉选择性注意的机制轻松找到他们感兴趣的对象。受此启发,提出了一种将贝叶斯网络中自下而上和自上而下的提示进行整合的视觉注意模型。在此模型中,自下而上的颜色和形状提示与自上而下的颜色和形状先验相结合,所有这些提示都与它们的位置相关,模拟了可视区域V4中自下而上和自上而下的提示的融合。人类视觉系统。然后,根据这些提示构造贝叶斯网络,并将每个提示表示为网络中的一个节点。最后,通过贝叶斯网络中的推论,创建了关于定位目标对象的显着性图。通过推论大大减少了物体检测中的不确定性。实验表明,该模型可以检测出背景复杂的图像中感兴趣的对象,即使这些对象具有不同的大小,颜色或形状,并且出现在图像的不同位置。与著名的Itti视觉注意力模型的结果相比,我们模型的优势在于它可以获取物体的轮廓,这对物体识别的进一步处理非常有帮助。

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