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Mind the Pad -- CNNs can Develop Blind Spots

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arxiv 2010.02178 v1 pith:JTPC2XUH submitted 2020-10-05 cs.CV cs.AIstat.ML

Mind the Pad -- CNNs can Develop Blind Spots

classification cs.CV cs.AIstat.ML
keywords biasactivationblindcertaindemonstrateleadingmechanismpadding
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We show how feature maps in convolutional networks are susceptible to spatial bias. Due to a combination of architectural choices, the activation at certain locations is systematically elevated or weakened. The major source of this bias is the padding mechanism. Depending on several aspects of convolution arithmetic, this mechanism can apply the padding unevenly, leading to asymmetries in the learned weights. We demonstrate how such bias can be detrimental to certain tasks such as small object detection: the activation is suppressed if the stimulus lies in the impacted area, leading to blind spots and misdetection. We propose solutions to mitigate spatial bias and demonstrate how they can improve model accuracy.

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