We consider the problem of detecting out-of-distribution images in neural networks. We propose ODIN, a simple and effective method that does not require any change to a pre-trained neural network. Our method is based on the observation that using temperature scaling and adding small perturbations to the input can separate the softmax score distributions between in- and out-of-distribution images, allowing for more effective detection. We show in a series of experiments that ODIN is compatible with diverse network architectures and datasets. It consistently outperforms the baseline approach by a large margin, establishing a new state-of-the-art performance on this task. For example, ODIN reduces the false positive rate from the baseline 34.7% to 4.3% on the DenseNet (applied to CIFAR-10) when the true positive rate is 95%.
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| Out-of-Distribution Detection | ImageNet dogs vs ImageNet non-dogs | AUROC | 90.8 | ResNet 34 + ODIN |
| Out-of-Distribution Detection | MS-1M vs. IJB-C | AUROC | 61.3 | ResNeXt 50 + ODIN |