Deep Multimodal Fusion by Channel Exchanging
This work addresses a performance bottleneck in multimodal fusion for applications like RGB-D segmentation and multi-domain image translation, offering a compact and effective solution.
The paper tackles the trade-off between inter-modal fusion and intra-modal processing in deep multimodal fusion by proposing Channel-Exchanging-Network (CEN), a parameter-free framework that dynamically exchanges channels between modalities based on channel importance, achieving state-of-the-art results in semantic segmentation and image translation tasks.
Deep multimodal fusion by using multiple sources of data for classification or regression has exhibited a clear advantage over the unimodal counterpart on various applications. Yet, current methods including aggregation-based and alignment-based fusion are still inadequate in balancing the trade-off between inter-modal fusion and intra-modal processing, incurring a bottleneck of performance improvement. To this end, this paper proposes Channel-Exchanging-Network (CEN), a parameter-free multimodal fusion framework that dynamically exchanges channels between sub-networks of different modalities. Specifically, the channel exchanging process is self-guided by individual channel importance that is measured by the magnitude of Batch-Normalization (BN) scaling factor during training. The validity of such exchanging process is also guaranteed by sharing convolutional filters yet keeping separate BN layers across modalities, which, as an add-on benefit, allows our multimodal architecture to be almost as compact as a unimodal network. Extensive experiments on semantic segmentation via RGB-D data and image translation through multi-domain input verify the effectiveness of our CEN compared to current state-of-the-art methods. Detailed ablation studies have also been carried out, which provably affirm the advantage of each component we propose. Our code is available at https://github.com/yikaiw/CEN.