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Active exploration: Knowing when we're wrong

机译:积极的探索:知道我们什么时候错了

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Many strategies in computer vision assume the existence of general purpose models that can be used to characterize a scene or environment at various levels of abstraction. The usual assumptions are that a selected model is competent to describe a particular attribute and that the parameters of this model can be estimated by interpreting the input data in an appropriate manner. The authors consider the problem of determining when these assumptions break down so that an alternate model may be considered or further interpretation of data performed. Specifically, how this can be accomplished is analyzed within the framework of an approach that actively builds a description of the environment from several different viewpoints. It is shown that a gaze planning strategy used to minimize model parameter variance can also be used to decide whether the model itself provides an adequate description of the environment.
机译:计算机愿景中的许多策略假设存在通用模型的存在,该模型可用于在各种抽象级别的场景或环境中表征。通常的假设是所选模型是能够描述特定属性的竞争力,并且可以通过以适当的方式解释输入数据来估计该模型的参数。作者考虑确定这些假设何时分解的问题,以便可以考虑替代模型或进一步解释所执行的数据。具体而言,如何在一种方法的框架内分析这一点,该方法的主动地构建来自几个不同的观点的环境的描述。结果表明,用于最小化模型参数方差的凝视规划策略也可以用于确定模型本身是否提供了对环境的充分描述。

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