用于视觉问答的神经符号ASP管道

IF 1.4 2区 数学 Q3 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Thomas Eiter, N. Higuera, J. Oetsch, Michael Pritz
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引用次数: 7

摘要

摘要针对CLEVR,我们提出了一个神经符号视觉问答(VQA)管道,CLEVR是一个众所周知的数据集,它由显示有物体的场景的图片和与之相关的问题组成。我们的管道包括(i)训练用于CLEVR场景的对象分类和边界盒预测的神经网络,(ii)对神经网络预测值分布的统计分析,以确定高置信度预测的阈值,以及(iii)将CLEVR问题和网络预测转换为通过置信度阈值的逻辑程序,以便我们可以使用答案集编程求解器计算答案。通过利用选择规则,我们考虑了确定性和非确定性场景编码。我们的实验表明,与确定性方法相比,即使神经网络训练较差,非确定性场景编码也能取得良好的效果。如果网络预测不够完美,这对于构建健壮的VQA系统非常重要。此外,我们表明,与相关的神经符号方法相比,将非确定性限制在合理的选择上可以更有效地实现,而不会失去太多的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Neuro-Symbolic ASP Pipeline for Visual Question Answering
Abstract We present a neuro-symbolic visual question answering (VQA) pipeline for CLEVR, which is a well-known dataset that consists of pictures showing scenes with objects and questions related to them. Our pipeline covers (i) training neural networks for object classification and bounding-box prediction of the CLEVR scenes, (ii) statistical analysis on the distribution of prediction values of the neural networks to determine a threshold for high-confidence predictions, and (iii) a translation of CLEVR questions and network predictions that pass confidence thresholds into logic programmes so that we can compute the answers using an answer-set programming solver. By exploiting choice rules, we consider deterministic and non-deterministic scene encodings. Our experiments show that the non-deterministic scene encoding achieves good results even if the neural networks are trained rather poorly in comparison with the deterministic approach. This is important for building robust VQA systems if network predictions are less-than perfect. Furthermore, we show that restricting non-determinism to reasonable choices allows for more efficient implementations in comparison with related neuro-symbolic approaches without losing much accuracy.
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来源期刊
Theory and Practice of Logic Programming
Theory and Practice of Logic Programming 工程技术-计算机:理论方法
CiteScore
4.50
自引率
21.40%
发文量
40
审稿时长
>12 weeks
期刊介绍: Theory and Practice of Logic Programming emphasises both the theory and practice of logic programming. Logic programming applies to all areas of artificial intelligence and computer science and is fundamental to them. Among the topics covered are AI applications that use logic programming, logic programming methodologies, specification, analysis and verification of systems, inductive logic programming, multi-relational data mining, natural language processing, knowledge representation, non-monotonic reasoning, semantic web reasoning, databases, implementations and architectures and constraint logic programming.
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