Presentation 2019-11-28
A proposal of a method for analyzing causes of incorrect detection when detecting objects using Deep Learning
Tomonori Kubota, Takanori Nakao, Eiji Yoshida,
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Abstract(in Japanese) (See Japanese page)
Abstract(in English) In this paper, we propose a method for analyzing the causes of incorrect detection / poor accuracy when detecting objects using Deep Learning. The authors have previously proposed a method for visualizing the cause of misrecognition in object recognition where one recognition object exists in an image. This time, we extended this method to object detection (YOLOv3) which predicts the existence position and classification probability of multiple objects. This method can extract and visualize causes of incorrect detection / poor accuracy, at pixel granularity. And, by applying the extracted information to the image in which the object cannot be correctly detected, it can be corrected to the image in which prediction of the position where the object exists and classification probability of correct class are improved. Thereby, the extracted information can correctly indicate the causes of incorrect detection / poor accuracy.
Keyword(in Japanese) (See Japanese page)
Keyword(in English) object detection / convolutional neural network / inference / misdetection / visualizing / XAI
Paper # AI2019-30
Date of Issue 2019-11-21 (AI)

Conference Information
Committee AI
Conference Date 2019/11/28(1days)
Place (in Japanese) (See Japanese page)
Place (in English)
Topics (in Japanese) (See Japanese page)
Topics (in English)
Chair Naoki Fukuta(Shizuoka Univ.)
Vice Chair Yuichi Sei(Univ. of Electro-Comm.) / Yuko Sakurai(AIST)
Secretary Yuichi Sei(Osaka Univ.) / Yuko Sakurai(Tokyo Univ. of Agriculture and Technology)
Assistant

Paper Information
Registration To Technical Committee on Artificial Intelligence and Knowledge-Based Processing
Language JPN
Title (in Japanese) (See Japanese page)
Sub Title (in Japanese) (See Japanese page)
Title (in English) A proposal of a method for analyzing causes of incorrect detection when detecting objects using Deep Learning
Sub Title (in English)
Keyword(1) object detection
Keyword(2) convolutional neural network
Keyword(3) inference
Keyword(4) misdetection
Keyword(5) visualizing
Keyword(6) XAI
1st Author's Name Tomonori Kubota
1st Author's Affiliation Fujitsu Laboratories LTD.(Fujitsu Lab.)
2nd Author's Name Takanori Nakao
2nd Author's Affiliation Fujitsu Laboratories LTD.(Fujitsu Lab.)
3rd Author's Name Eiji Yoshida
3rd Author's Affiliation Fujitsu Laboratories LTD.(Fujitsu Lab.)
Date 2019-11-28
Paper # AI2019-30
Volume (vol) vol.119
Number (no) AI-317
Page pp.pp.1-6(AI),
#Pages 6
Date of Issue 2019-11-21 (AI)