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Multi-scale recognition with DAG-CNNs

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arxiv 1505.05232 v1 pith:GQ5OSV5X submitted 2015-05-20 cs.CV

Multi-scale recognition with DAG-CNNs

classification cs.CV
keywords featuresclassificationdag-cnnsmulti-scalemit67multiscaleperformancescene15
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We explore multi-scale convolutional neural nets (CNNs) for image classification. Contemporary approaches extract features from a single output layer. By extracting features from multiple layers, one can simultaneously reason about high, mid, and low-level features during classification. The resulting multi-scale architecture can itself be seen as a feed-forward model that is structured as a directed acyclic graph (DAG-CNNs). We use DAG-CNNs to learn a set of multiscale features that can be effectively shared between coarse and fine-grained classification tasks. While fine-tuning such models helps performance, we show that even "off-the-self" multiscale features perform quite well. We present extensive analysis and demonstrate state-of-the-art classification performance on three standard scene benchmarks (SUN397, MIT67, and Scene15). In terms of the heavily benchmarked MIT67 and Scene15 datasets, our results reduce the lowest previously-reported error by 23.9% and 9.5%, respectively.

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