首页> 外文会议>Neural Engineering, 2009. NER '09 >“Lets see what you think! Bayesian reconstruction of perceptual experiences from human brain activity”
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“Lets see what you think! Bayesian reconstruction of perceptual experiences from human brain activity”

机译:“让我们看看您的想法!来自人脑活动的知觉经验的贝叶斯重建”

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Summary form only given. Recent interest in brain-computer interfaces has pushed development of decoding models that aim to classify, identify or reconstruct visual stimuli directly from measured brain activity. Most decoding models are based on non-parametric algorithms such as SVM and do not exploit current computational models of visual processing. We have pioneered an alternative approach in which the decoding algorithm is inferred from one or more explicit visual processing (nonlinear filtering) models. In previous work we showed that our approach extracts far more information from functional MRI measurements than was generally believed possible. In this task I will describe a new Bayesian decoding model that can actually reconstruct natural images that were seen by an observer from brain activity measured using fMRI. The decoder combines three elements: (1) a structural encoding model that characterizes signals from early visual areas; (2) a semantic encoding model that characterizes signals from higher visual areas; and (3) appropriate priors that incorporate statistical information about the structure and semantics of natural scenes. By combining all these elements the decoder produces reconstructions that accurately reflect the distribution, structure and semantic category of the objects contained in the original image. These results help clarify how distinct representations in different parts of the brain can be combined to provided a coherent reconstruction of the visual world; they also highlight a potentially important role for prior knowledge in visual perception. Our Bayesian decoding framework can be generalized directly to permit reconstruction of other perceptual dimensions, and might facilitate reconstruction of subjective perceptual processes such as visual imagery and dreaming. In the future Bayesian decoding algorithms might form the basis of powerful new brain-reading technologies and brain-computer interfaces.
机译:仅提供摘要表格。最近对脑机接口的兴趣推动了解码模型的开发,该解码模型的目的是直接从测得的大脑活动中分类,识别或重建视觉刺激。大多数解码模型基于诸如SVM的非参数算法,并且不利用视觉处理的当前计算模型。我们开创了另一种方法,其中从一个或多个显式视觉处理(非线性滤波)模型中推断出解码算法。在以前的工作中,我们证明了我们的方法从功能性MRI测量中提取的信息远比通常认为的要多。在本任务中,我将描述一个新的贝叶斯解码模型,该模型实际上可以重建观察者从使用fMRI测量的大脑活动中看到的自然图像。解码器结合了三个要素:(1)表征早期视觉区域信号的结构编码模型; (2)语义编码模型,用于表征来自较高视觉区域的信号; (3)包含有关自然场景的结构和语义的统计信息的适当先验。通过组合所有这些元素,解码器产生的重构将准确反映原始图像中包含的对象的分布,结构和语义类别。这些结果有助于弄清如何将大脑不同部位的不同表示结合起来,以提供视觉世界的连贯重建。它们还突出显示了视觉感知中先验知识的潜在重要作用。我们的贝叶斯解码框架可以直接推广,以允许重建其他感知维度,并且可能有助于重建主观感知过程,例如视觉图像和梦境。将来,贝叶斯解码算法可能会构成强大的新型大脑读取技术和脑机接口的基础。

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