Recurrent Neural Network Approach for Table Field Extraction in Business Documents

Clément Sage, A. Aussem, H. Elghazel, V. Eglin, Jérémy Espinas
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引用次数: 18

Abstract

Efficiently extracting information from documents issued by their partners is crucial for companies that face huge daily document flows. Particularly, tables contain most valuable information of business documents. However, their contents are challenging to automatically parse as tables from industrial contexts may have complex and ambiguous physical structure. Bypassing their structure recognition, we propose a generic method for end-to-end table field extraction that starts with the sequence of document tokens segmented by an OCR engine and directly tags each token with one of the possible field types. Similar to the state-of-the-art methods for non-tabular field extraction, our approach resorts to a token level recurrent neural network combining spatial and textual features. We empirically assess the effectiveness of recurrent connections for our task by comparing our method with a baseline feedforward network having local context knowledge added to its inputs. We train and evaluate both approaches on a dataset of 28,570 purchase orders to retrieve the ID numbers and quantities of the ordered products. Our method outperforms the baseline with micro F1 score on unknown document layouts of 0.821 compared to 0.764.
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递归神经网络在商务文档表字段提取中的应用
有效地从合作伙伴发布的文档中提取信息对于每天面临大量文档流的公司至关重要。特别是,表包含业务文档中最有价值的信息。然而,它们的内容很难自动解析,因为来自工业上下文的表可能具有复杂和模糊的物理结构。绕过它们的结构识别,我们提出了一种端到端表字段提取的通用方法,该方法从由OCR引擎分割的文档标记序列开始,并直接用一种可能的字段类型标记每个标记。与最先进的非表格字段提取方法类似,我们的方法采用结合空间和文本特征的令牌级递归神经网络。我们通过将我们的方法与将本地上下文知识添加到其输入的基线前馈网络进行比较,以经验评估循环连接对我们任务的有效性。我们在28,570个采购订单的数据集上训练和评估这两种方法,以检索订购产品的ID号和数量。我们的方法在未知文档布局上的微F1得分为0.821,优于基线的0.764。
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