EPrOD: Evolved Probabilistic Object Detector with Diverse Samples

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초록

Even small errors in object detection algorithms can lead to serious accidents in critical fields such as factories and autonomous vehicles. Thus, a so-called probabilistic object detector (PrOD) has been proposed. However, the PrOD still has problems of underestimating the uncertainty of results and causing biased approximation due to limited information. To solve the above-mentioned problems, this paper proposes a new PrOD composed of four key techniques, i.e., albedo extraction, soft-DropBlock, stacked NMS, and inter-frame processing. In terms of Probability-based Detection Quality (PDQ) metric, the proposed object detector achieved 22.46, which is 4.46 higher than a backbone method, for the Australian Centre for Robotic Vision (ACRV) validation dataset consisting of four videos.

키워드

Probabilistic object detectorAlbedo extractionMonte Carlo methodNon-maximum suppressionDROPOUT
제목
EPrOD: Evolved Probabilistic Object Detector with Diverse Samples
저자
Choi, JaewoongLee, SungwookLee, SeunghyunSong, Byung Cheol
DOI
10.1007/978-3-030-65414-6_6
발행일
2020
유형
Proceedings Paper
저널명
COMPUTER VISION - ECCV 2020 WORKSHOPS, PT VI
12540
페이지
56 ~ 66