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Neurally Inspired Rapid Detection of Sparse Objects in videos

机译:启发性快速检测视频中的稀疏对象

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In this paper, we describe COGNIVA, a closed-loop Cognitive-Neural method and system for image and video analysis that combines recent technological breakthroughs in bio-vision cognitive algorithms and neural signatures of human visual processing. COGNIVA is an "operational neuroscience" framework for intelligent and rapid search and categorization of Items Of Interest (IOI) in imagery and video. The IOI could be a single object, group of objects, specific image regions, specific spatio-temporal pattern/sequence or even the category that the image itself belongs to (e.g., vehicle or non-vehicle). There are two main types of approach for rapid search and categorization of IOI in imagery and video. The first approach uses conventional machine vision or bio-inspired cognitive algorithms. These usually need a predefined set of IOI and suffer from high false alarm rates. The second class of algorithms is based on neural signatures of target detection. These algorithms usually break the entire image into sub-images and process EEG data from these images and classify them based on it. This approach may suffer from high false alarms and is slow because the entire image is chipped and presented to the human observer. The proposed COGNIVA overcomes the limitations of both methods by combining them resulting in a low false alarm rate and high detection with high throughput making it applicable to both image and video analysis. In the most basic form, COGNIVA first uses bio-inspired cognitive algorithms for deciding potential IOI in a sequence of images/video. These potential IOI are then shown to a human and neural signatures of visual detection of IOI are collected and processed. The resulting signatures are used to categorize and provide final IOI. We will present the concept and typical results of COGNIVA for detecting Items of interest in image data.
机译:在本文中,我们描述了COGNIVA,这是一种用于图像和视频分析的闭环认知神经方法和系统,结合了生物视觉认知算法和人类视觉处理的神经特征的最新技术突破。 COGNIVA是一个“操作神经科学”框架,用于对图像和视频中的感兴趣项(IOI)进行智能,快速的搜索和分类。 IOI可以是单个对象,对象组,特定的图像区域,特定的时空模式/序列,甚至可以是图像本身所属的类别(例如,车辆或非车辆)。在图像和视频中对IOI进行快速搜索和分类的方法主要有两种。第一种方法使用常规的机器视觉或生物启发的认知算法。这些通常需要一组预定义的IOI,并且误报率很高。第二类算法基于目标检测的神经特征。这些算法通常将整个图像分解为子图像,并处理这些图像的EEG数据,并根据这些数据对它们进行分类。这种方法可能会遭受高误报,并且很慢,因为整个图像被碎片化并呈现给人类观察者。提出的COGNIVA通过将两种方法结合在一起,从而克服了这两种方法的局限性,从而实现了较低的误报率和高检测率以及高通量,使其既适用于图像分析又适用于视频分析。最基本的形式是,COGNIVA首先使用生物启发的认知算法来确定图像/视频序列中的潜在IOI。然后将这些潜在的IOI显示给人类,并收集和处理IOI视觉检测的神经特征。生成的签名用于分类并提供最终的IOI。我们将介绍用于检测图像数据中感兴趣项的COGNIVA的概念和典型结果。

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