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Training Deformable Part Models with Decorrelated Features

机译:训练具有装饰相关功能的可变形零件模型

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In this paper, we show how to train a deformable part model (DPM) fast-typically in less than 20 minutes, or four times faster than the current fastest method-while maintaining high average precision on the PASCAL VOC datasets. At the core of our approach is "latent LDA," a novel generalization of linear discriminant analysis for learning latent variable models. Unlike latent SVM, latent LDA uses efficient closed-form updates and does not require an expensive search for hard negative examples. Our approach also acts as a springboard for a detailed experimental study of DPM training. We isolate and quantify the impact of key training factors for the first time (e.g., How important are discriminative SVM filters? How important is joint parameter estimation? How many negative images are needed for training?). Our findings yield useful insights for researchers working with Markov random fields and part-based models, and have practical implications for speeding up tasks such as model selection.
机译:在本文中,我们展示了如何在不到20分钟的时间内(通常是目前最快的方法)快速训练可变形零件模型(DPM),同时又如何在PASCAL VOC数据集上保持较高的平均精度。我们方法的核心是“潜在LDA”,这是一种用于学习潜在变量模型的线性判别分析的新颖概括。与潜在的SVM不同,潜在的LDA使用有效的封闭格式更新,并且不需要花费大量精力来查找硬性否定示例。我们的方法还充当了DPM培训详细实验研究的跳板。我们首次隔离并量化了关键训练因素的影响(例如,区分SVM过滤器有多重要?联合参数估计有多重要?训练需要多少张负像?)。我们的发现为研究马尔可夫随机场和基于零件的模型的研究人员提供了有用的见解,并且对加快诸如模型选择等任务具有实际意义。

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