Feb. 13, 2024, 5:47 a.m. | Ketan Kotwal Tanay Deshmukh Preeti Gopal

cs.CV updates on arXiv.org arxiv.org

Large occlusions result in a significant decline in image classification accuracy. During inference, diverse types of unseen occlusions introduce out-of-distribution data to the classification model, leading to accuracy dropping as low as 50%. As occlusions encompass spatially connected regions, conventional methods involving feature reconstruction are inadequate for enhancing classification performance. We introduce LEARN: Latent Enhancing feAture Reconstruction Network -- An auto-encoder based network that can be incorporated into the classification model before its classifier head without modifying the weights of …

accuracy autoencoder classification classification model cs.cv data distribution diverse feature image inference learn low performance types

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