CVMay 11, 2017

Negative Results in Computer Vision: A Perspective

arXiv:1705.04402v338 citations
Originality Synthesis-oriented
AI Analysis

It highlights a cultural issue in computer vision research that could improve scientific rigor and transparency for researchers.

The paper addresses the underappreciation of negative results in computer vision, arguing for their importance in the field's experimental nature and discussing dissemination, incentives, and lessons from cognitive vision research.

A negative result is when the outcome of an experiment or a model is not what is expected or when a hypothesis does not hold. Despite being often overlooked in the scientific community, negative results are results and they carry value. While this topic has been extensively discussed in other fields such as social sciences and biosciences, less attention has been paid to it in the computer vision community. The unique characteristics of computer vision, particularly its experimental aspect, call for a special treatment of this matter. In this paper, I will address what makes negative results important, how they should be disseminated and incentivized, and what lessons can be learned from cognitive vision research in this regard. Further, I will discuss issues such as computer vision and human vision interaction, experimental design and statistical hypothesis testing, explanatory versus predictive modeling, performance evaluation, model comparison, as well as computer vision research culture.

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