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Brendan Klare(ROC):人脸识别的挑战与机遇.pdf

上传人: 芦苇 编号:651689 2025-05-01 21页 2.57MB

1、Presented by:Brendan F.Klare,Ph.D.03 April 2025Challenges and Opportunities in Face Recognition22024 ROC|All Rights ReservedSummary of Face Recognition Progress Last IFPC,we discussed the continued exponential reductions in error ratesAre these still occurring?Top 10 Algorithms newer than 3 years:To

2、p 10 Algorithms older than 3 years:Mugshot accuracy largely unchanged the last 3 yearsSource:https:/pages.nist.gov/frvt/html/frvt11.html(Accessed on 4-1-2025)Top 10 Algorithms newer than 3 years:Top 10 Algorithms older than 3 years:Visa Border:1.5x reduction in error rate in 3 yearsSource:https:/pag

3、es.nist.gov/frvt/html/frvt11.html(Accessed on 4-1-2025)Top 10 Algorithms newer than 3 years:Top 10 Algorithms older than 3 years:Border Kiosk:1.3x reduction in error rate in 3 yearsSource:https:/pages.nist.gov/frvt/html/frvt11.html(Accessed on 4-1-2025)Top 10 Algorithms newer than 3 years:Top 10 Alg

4、orithms older than 3 years:Yaw 45 degrees:Over 3x error rate reductionSource:https:/pages.nist.gov/frvt/html/frvt11.html(Accessed on 4-1-2025)72024 ROC|All Rights ReservedVendor Error Rate Reduction Over Time2017-2022:Exponential error rate reduction2023 to now:linear reduction in error rate82024 RO

5、C|All Rights ReservedIs progress is slowing down,or are certain datasets getting“solved”in constrained use-cases?What are these remaining errors in the mugshot dataset?Identical twins?Quality issues?Ground truth errors?Confounding dopplegangers?How consistently are these top 10 algorithms all gettin

6、g the wrong answer on the same comparisons?If all these extremely accurate algorithms are wrong on the same comparisons,are they wrong,or are us humans wrong?82024 ROC|All Rights ReservedChallengesTop 10 Lowest Error Rates on Mugshot 1:1Perhaps issue is 1:1 FR benchmarks need to measure FNMR at lowe

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本文由Brendan F. Klare, Ph.D.于2025年4月3日提出,主要讨论了人脸识别技术的挑战与机遇。核心数据如下:1. 近三年,签证边境和自助服务终端的人脸识别错误率分别下降了约1.5倍和1.3倍。2. 人脸识别算法在受限场景(如 mugshot)中的准确率基本未变,但在高度非受限场景中,仍有巨大的进步空间。3. 在1:1的人脸识别匹配中,目前最先进的算法在某些比较中仍然会给出错误的答案,这可能是由于数据集的问题或者算法本身的限制。4. 目前,只有两个供应商在所有基准测试中名列前十,其中一个在1:1在线领导者板中排名第五,尽管他们的平均错误率排名第二。5. 目前有七个数据集在FRTE 1:1在线领导者板中列出,但人们普遍认为这些数据集的重要性并不相同。6. 在移动身份验证等 rapidly progressing use-cases 中,面部识别算法已经取得了极高的准确率。7. 目前,面部识别技术的发展已经进入了一个新的阶段,除了准确性之外,其他因素(如成本、客户支持、硬件要求、可扩展性和可信度)在采购决策中也变得越来越重要。
算法误差原因何在?" 面部识别技术的未来趋势如何?" 面部识别在移动端的应用前景如何?"
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