The traditional model upgrading paradigm for retrieval requires recomputing all gallery embeddings before deploying the new model (dubbed as "backfilling"), which is quite expensive and time-consuming considering billions of instances in industrial applications. BCT presents the first step towards backward-compatible model upgrades to get rid of backfilling. It is workable but leaves the new model in a dilemma between new feature discriminativeness and new-to-old compatibility due to the undifferentiated compatibility constraints. In this work, we propose Darwinian Model Upgrades (DMU), which disentangle the inheritance and variation in the model evolving with selective backward compatibility and forward adaptation, respectively. The old-to-new heritable knowledge is measured by old feature discriminativeness, and the gallery features, especially those of poor quality, are evolved in a lightweight manner to become more adaptive in the new latent space. We demonstrate the superiority of DMU through comprehensive experiments on large-scale landmark retrieval and face recognition benchmarks. DMU effectively alleviates the new-to-new degradation and improves new-to-old compatibility, rendering a more proper model upgrading paradigm in large-scale retrieval systems.
翻译:传统的回收模式升级模式要求在采用新模式(以“回填”形式嵌入)之前重新计算所有画廊嵌入,新模式(以“回填”形式嵌入)非常昂贵且耗时,考虑到工业应用中的数十亿种情况。BCT是朝向后向后向兼容模式升级以摆脱回填模式的第一步。该模式是可行的,但使新模式处于两难境地:一是新的特征歧视性,二是新老的兼容性,二是新老的兼容性,二是无差别的兼容性限制。在这项工作中,我们提议达尔文模式升级(DMU),分别将新模式的继承和变异与选择性的后向兼容性和前向适应性混淆起来。旧的新的可遗传性知识以旧特征的区别性为衡量,而古老的画廊特征,特别是质量差的特征则以轻量化的方式演变,以在新的潜藏空间中更具适应性。我们通过大规模里程碑检索和面识别基准的全面实验,展示DMU的优越性。DMU有效地缓解了新到新退化现象,并改进了新老的兼容性,使大规模检索系统有了更适当的模型升级模式。