首页> 外文会议>European conference on computer vision >Towards Transparent Systems: Semantic Characterization of Failure Modes
【24h】

Towards Transparent Systems: Semantic Characterization of Failure Modes

机译:朝向透明系统:故障模式的语义表征

获取原文

摘要

Today's computer vision systems are not perfect. They fail frequently. Even worse, they fail abruptly and seemingly inexplicably. We argue that making our systems more transparent via an explicit human understandable characterization of their failure modes is desirable. We propose characterizing the failure modes of a vision system using semantic attributes. For example, a face recognition system may say "If the test image is blurry, or the face is not frontal, or the person to be recognized is a young white woman with heavy make up, I am likely to fail." This information can be used at training time by researchers to design better features, models or collect more focused training data. It can also be used by a downstream machine or human user at test time to know when to ignore the output of the system, in turn making it more reliable. To generate such a "specification sheet", we discrimina-tively cluster incorrectly classified images in the semantic attribute space using L1-regularized weighted logistic regression. We show that our specification sheets can predict oncoming failures for face and animal species recognition better than several strong baselines. We also show that lay people can easily follow our specification sheets.
机译:今天的电脑视觉系统并不完美。他们经常失败。更糟糕的是,他们突然和似乎莫名其妙地失败了。我们认为,通过明确的人类可以理解的故障模式使我们的系统更加透明。我们建议使用语义属性来表征视觉系统的故障模式。例如,面部识别系统可以说“如果测试图像模糊,或者面部不是正面,或者要识别的人是一个重量弥补的年轻白人女性,我很可能会失败。”这些信息可由研究人员在培训时间用于设计更好的功能,模型或收集更多的培训数据。它也可以在测试时间通过下游机器或人类用户使用,知道何时何时忽略系统的输出,反过来使其更可靠。要生成这样的“规格表”,我们使用L1正则化加权逻辑回归来判断语义属性空间中的群集在语义属性空间中的错误分类。我们展示我们的规格表可以预测面部和动物物种的失败比几个强基线更好。我们还表明,人们可以轻松遵循我们的规格表。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号