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首页> 外文期刊>International Journal of Computer Vision >A computational learning theory of active object recognition under uncertainty
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A computational learning theory of active object recognition under uncertainty

机译:不确定条件下主动目标识别的计算学习理论

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We present some theoretical results related to the problem of actively searching a 3D scene to determine the positions of one or more pre-specified objects. We investigate the effects that input noise, occlusion, and the VC-dimensions of the related representation classes have in terms of localizing all objects present in the search region, under finite computational resources and a search cost constraint. We present a number of bounds relating the noise-rate of low level feature detection to the VC-dimension of an object representable by an architecture satisfying the given computational constraints. We prove that under certain conditions, the corresponding classes of object localization and recognition problems are efficiently learnable in the presence of noise and under a purposive learning strategy, as there exists a polynomial upper bound on the minimum number of examples necessary to correctly localize the targets under the given models of uncertainty. We also use these arguments to show that passive approaches to the same problem do not necessarily guarantee that the problem is efficiently learnable. Under this formulation, we prove the existence of a number of emergent relations between the object detection noise-rate, the scene representation length, the object class complexity, and the representation class complexity, which demonstrate that selective attention is not only necessary due to computational complexity constraints, but it is also necessary as a noise-suppression mechanism and as a mechanism for efficient object class learning. These results concretely demonstrate the advantages of active, purposive and attentive approaches for solving complex vision problems.
机译:我们提出一些与主动搜索3D场景以确定一个或多个预定对象位置有关的理论结果。我们研究在有限的计算资源和搜索成本约束下,输入噪声,遮挡和相关表示类别的VC维在定位搜索区域中存在的所有对象方面所产生的影响。我们提出了一些界限,这些界限将低级特征检测的噪声率与对象的VC维度相关联,该VC维度可以由满足给定计算约束的体系结构表示。我们证明,在一定条件下,在存在噪声和有目的的学习策略下,可以有效地学习相应类别的对象定位和识别问题,因为在正确定位目标所需的最少示例数上存在多项式上限在给定的不确定性模型下。我们还使用这些论点来表明,针对同一问题的被动方法并不一定保证该问题可以有效学习。根据该公式,我们证明了目标检测噪声率,场景表示长度,对象类别复杂度和表示类别复杂度之间存在许多紧急关系,这表明选择性注意不仅由于计算而必须复杂性约束,但它也有必要作为噪声抑制机制和有效的对象类学习机制。这些结果具体证明了主动,有目的和专心的方法可以解决复杂的视觉问题。

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