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Dynamic Task-Related and Demand-Driven Scene Representation

机译:动态任务相关和需求驱动的场景表示

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摘要

Humans selectively process and store details about the vicinity based on their knowledge about the scene, the world and their current task. In doing so, only those pieces of information are extracted from the visual scene that is required for solving a given task. In this paper, we present a flexible system architecture along with a control mechanism that allows for a task-dependent representation of a visual scene. Contrary to existing approaches, our system is able to acquire information selectively according to the demands of the given task and based on the system’s knowledge. The proposed control mechanism decides which properties need to be extracted and how the independent processing modules should be combined, based on the knowledge stored in the system’s long-term memory. Additionally, it ensures that algorithmic dependencies between processing modules are resolved automatically, utilizing procedural knowledge which is also stored in the long-term memory. By evaluating a proof-of-concept implementation on a real-world table scene, we show that, while solving the given task, the amount of data processed and stored by the system is considerably lower compared to processing regimes used in state-of-the-art systems. Furthermore, our system only acquires and stores the minimal set of information that is relevant for solving the given task.
机译:人们根据对场景,世界和当前任务的了解,有选择地处理和存储附近的细节。这样,仅从视觉场景中提取解决给定任务所需的那些信息。在本文中,我们提出了一种灵活的系统架构以及一种控制机制,该机制允许根据任务呈现视觉场景。与现有方法相反,我们的系统能够根据给定任务的需求并基于系统的知识来选择性地获取信息。所提出的控制机制根据存储在系统长期内存中的知识,决定需要提取哪些属性以及应如何组合独立的处理模块。此外,它还利用存储在长期存储器中的程序知识来确保自动解决处理模块之间的算法依赖性。通过评估真实表场景上的概念验证实现,我们表明,在解决给定任务的同时,系统处理和存储的数据量比状态处理中使用的处理方式要低得多。最先进的系统。此外,我们的系统仅获取和存储与解决给定任务相关的最少信息集。

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