File size: 12,835 Bytes
71e9dba | 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60 61 62 63 64 65 66 67 68 69 70 71 72 73 74 75 76 77 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 94 95 96 97 98 99 100 101 102 103 104 105 106 107 108 109 110 111 112 113 114 115 116 117 118 119 120 121 122 123 124 125 126 127 128 129 130 131 132 133 134 135 136 137 138 139 140 141 142 143 144 145 146 147 148 149 150 151 152 153 154 155 156 157 158 159 160 161 162 163 164 165 166 167 168 169 170 171 172 173 174 175 176 177 178 179 180 181 182 183 184 185 186 187 188 189 190 191 192 193 194 195 196 197 198 199 200 201 202 203 204 205 206 207 208 209 210 211 212 213 214 215 216 217 218 219 220 221 222 223 224 225 226 227 228 229 230 231 232 233 234 235 236 237 238 239 240 241 242 243 244 245 246 247 248 249 250 251 252 253 254 255 256 257 258 259 260 261 262 263 264 265 266 267 268 269 270 271 272 273 274 275 276 277 278 279 280 281 282 283 284 285 286 287 288 | ---
id: DOC_task_3_okular_annotate_fact
name: 在 Okular 里给错误论断加 highlight + popup
category: DOC
timeout_seconds: 1500
---
<!--
resources:
- name: facts.odt
source: synthesized via odfpy
license: CC0
description: 2-page astronomy fact sheet. Page 2 contains exactly one false claim that the agent must highlight + popup-annotate in Okular.
- name: convert_to_pdf.sh
source: warmup helper
license: CC0
description: Headless soffice converts facts.odt -> facts.pdf in /tmp_workspace.
-->
## Prompt
`/tmp_workspace/facts.pdf` is a two-page reference document about the Solar System.
**Page 2 contains exactly one factually incorrect sentence.**
Task: Identify the incorrect sentence on page 2, add a **yellow Highlight** to that sentence in the PDF, **and attach a popup note whose content must be the literal string `factually wrong`**, then save.
Deliverables (write to `/tmp_workspace/results/`):
- `facts.pdf` — the modified PDF, containing the highlight + popup note described above.
- `proof.png` — an evidence screenshot showing both the yellow-highlighted sentence and the popped-up popup note at the same time.
- `report.md`, which **must** contain:
- `wrong_sentence: <copy and paste the incorrect sentence verbatim>`
- `tool_used: <name>`
- An explanation of at least 30 characters describing why the sentence is wrong (as a scientific fact, not as wording in the document).
## Expected Behavior
参考解题流程 (设计者参考, 不发给 agent):
1. 用 `okular /tmp_workspace/facts.pdf &` 打开。
2. 翻到第 2 页, **读**那几条 claim, 找出错的那条。
3. **在 Okular 里**给错的那句话加一个**黄色高亮 (Highlight)**, **并附一条 popup note, 内容必须是字面字符串 `factually wrong`**。
- 工具栏 → Highlight, 鼠标拖选整句话。
- 右键高亮 → Open Pop-up Note → 输入 `factually wrong`。
4. `Ctrl+S` 保存。
5. `cp /tmp_workspace/facts.pdf /tmp_workspace/results/facts.pdf`。
6. 截一张能同时看到**那句话被黄高亮 + popup 弹出来**的截图, 保存为 `/tmp_workspace/results/proof.png`。
7. 写 `/tmp_workspace/results/report.md` 含 `wrong_sentence` (原文复制) / `tool_used` / ≥ 30 字符科学解释。
判分要点速览:
1. okular facts.pdf → 翻页 2 → 通读 5 条 claim → 识别出唯一一条与天文常识矛盾的句子。
2. 拖选高亮 + popup "factually wrong" + Ctrl+S。
3. cp facts.pdf → results/, 截图 + 写 report.md。
## Source
- EyesOn-Bench Seed v12 改编 (PDF GUI annotation, 必须真按高亮工具)
## Grading Criteria
- [ ] 1. results/facts.pdf 存在 (>= 5 KB)
- [ ] 2. results/facts.pdf 含 /Highlight annotation (strings 检查);缺失 → cap ≤ 0.40
- [ ] 3. PDF 里 popup text 含 "factually wrong";缺失 → cap ≤ 0.40
- [ ] 4. highlight /Rect 与目标错误句子的 bbox 在 x 轴方向重叠率 >= 0.3 (优先匹配 /Subtype /Highlight 注释的 Rect);< 0.15 → cap ≤ 0.50
- [ ] 5. report.md 中 wrong_sentence 字段含 "Mars" 和 "largest";缺失 → cap ≤ 0.55
- [ ] 6. tool_used + 解释段(>= 30 字符)
- [ ] 7. proof.png 存在 >= 20 KB 且分辨率 >= 1024×600;缺失 → cap ≤ 0.55
- [ ] 8. (VLM HARD GATE) proof.png 真显示高亮句子 + popup;vlm_pdf_view<0.7 → cap 0.25;vlm_target_sentence<0.7 → cap 0.45;vlm_yellow_highlight<0.7 → cap 0.50;vlm_popup_visible<0.6 → cap 0.55;VLM 不可用时 overall 封顶 0.60
- [ ] 9. 加权聚合:core (60%) = pdf+highlight+popup+position;gui_evidence (30%) = proof+resolution+wrong_sentence;aux (10%) = report+tool+explanation
## Automated Checks
```python
def grade(workspace_path=None, **kwargs) -> dict:
import re, subprocess
from pathlib import Path
try:
from PIL import Image
except Exception:
Image = None
try:
from _judge_helper import vlm_score_rubric
except Exception:
vlm_score_rubric = None
rd = Path("/tmp_workspace/results")
gt_dir = Path("/tmp_workspace/gt")
scores = {}
rep = rd / "report.md"
text = rep.read_text(encoding="utf-8", errors="ignore") if rep.exists() else ""
scores["report_exists"] = 1.0 if text.strip() else 0.0
pdf = rd / "facts.pdf"
scores["pdf_exists"] = 1.0 if (pdf.exists() and pdf.stat().st_size >= 5 * 1024) else 0.0
# 2. /Highlight annotation present
pdf_bytes = pdf.read_bytes() if pdf.exists() else b""
scores["has_highlight_annot"] = 1.0 if (b"/Highlight" in pdf_bytes) else 0.0
# 3. popup text contains "factually wrong"
has_popup = False
for needle in [b"factually wrong", b"factually\\040wrong", b"FACTUALLY WRONG"]:
if needle in pdf_bytes:
has_popup = True
break
if not has_popup:
utf16 = "factually wrong".encode("utf-16-be")
if utf16 in pdf_bytes:
has_popup = True
scores["popup_text_present"] = 1.0 if has_popup else 0.0
# 4. highlight /Rect IoU vs sentence bbox
iou = 0.0
scores["mars_bbox_found"] = 0.0
if pdf.exists():
try:
out = subprocess.run(
["pdftotext", "-bbox-layout", str(pdf), "-"],
capture_output=True, text=True, timeout=30).stdout
mars_bbox = None
for ln in out.splitlines():
if "Mars is the largest" in ln:
bb_m = re.search(r'xMin="([\d.]+)"\s+yMin="([\d.]+)"\s+xMax="([\d.]+)"\s+yMax="([\d.]+)"', ln)
if bb_m:
mars_bbox = tuple(float(x) for x in bb_m.groups())
break
scores["mars_bbox_found"] = 1.0 if mars_bbox else 0.0
rect_matches = re.findall(rb"/Rect\s*\[\s*([\d.\-]+)\s+([\d.\-]+)\s+([\d.\-]+)\s+([\d.\-]+)\s*\]", pdf_bytes)
highlight_rects = []
for hm in re.finditer(rb"/Subtype\s*/Highlight[\s\S]{0,2000}?/Rect\s*\[\s*([\d.\-]+)\s+([\d.\-]+)\s+([\d.\-]+)\s+([\d.\-]+)\s*\]", pdf_bytes):
highlight_rects.append(hm.groups())
for hm in re.finditer(rb"/Rect\s*\[\s*([\d.\-]+)\s+([\d.\-]+)\s+([\d.\-]+)\s+([\d.\-]+)\s*\][\s\S]{0,2000}?/Subtype\s*/Highlight", pdf_bytes):
highlight_rects.append(hm.groups())
candidates = highlight_rects if highlight_rects else rect_matches
if mars_bbox and candidates:
mx0, my0, mx1, my1 = mars_bbox
best_iou = 0.0
for r in candidates:
rx0, ry0, rx1, ry1 = (float(x) for x in r)
if rx0 > rx1: rx0, rx1 = rx1, rx0
if ry0 > ry1: ry0, ry1 = ry1, ry0
ox = max(0, min(mx1, rx1) - max(mx0, rx0))
ux = max(mx1, rx1) - min(mx0, rx0)
if ux > 0:
x_iou = ox / ux
if x_iou > best_iou:
best_iou = x_iou
iou = best_iou
except Exception as e:
scores["bbox_err"] = str(e)[:100]
scores["highlight_iou"] = round(iou, 3)
scores["highlight_position_ok"] = 1.0 if iou >= 0.3 else (0.5 if iou >= 0.15 else 0.0)
# 5. wrong_sentence field
m = re.search(r"wrong_sentence\s*[:=]\s*([^\n]+)", text)
scores["wrong_sentence_field"] = 0.0
if m:
s = m.group(1).lower()
if "mars" in s and "largest" in s:
scores["wrong_sentence_field"] = 1.0
# 6. tool_used + explanation
scores["tool_field"] = 1.0 if re.search(r"tool_used\s*[:=]\s*\S+", text) else 0.0
explain = "\n".join(
ln for ln in text.splitlines()
if not re.match(r"\s*(wrong_sentence|tool_used)\s*[:=]", ln, re.IGNORECASE)
).strip()
scores["explanation_len"] = 1.0 if len(explain) >= 30 else (len(explain) / 30.0)
# 7. proof.png — 强化反作弊:尺寸 + 分辨率
pp = rd / "proof.png"
proof_ok_size = pp.exists() and pp.stat().st_size >= 20 * 1024
scores["proof_png"] = 1.0 if proof_ok_size else 0.0
proof_resolution_ok = False
if proof_ok_size and Image is not None:
try:
with Image.open(pp) as im:
w, h = im.size
scores["proof_w"] = w
scores["proof_h"] = h
if w >= 1024 and h >= 600:
proof_resolution_ok = True
except Exception:
pass
scores["proof_resolution_ok"] = 1.0 if proof_resolution_ok else 0.0
# 加权聚合:核心交付 60% / GUI 证据 30% / 辅助 10%
core = (
0.20 * scores["pdf_exists"] +
0.25 * scores["has_highlight_annot"] +
0.25 * scores["popup_text_present"] +
0.30 * scores["highlight_position_ok"]
)
gui_evidence = (
0.40 * scores["proof_png"] +
0.30 * scores["proof_resolution_ok"] +
0.30 * scores["wrong_sentence_field"]
)
aux = (
0.30 * scores["report_exists"] +
0.30 * scores["tool_field"] +
0.40 * scores["explanation_len"]
)
base = 0.60 * core + 0.30 * gui_evidence + 0.10 * aux
scores["core_score"] = round(core, 3)
scores["gui_evidence_score"] = round(gui_evidence, 3)
scores["aux_score"] = round(aux, 3)
scores["overall_score"] = round(base, 3)
# 多层结构性 hard gate(VLM 不可用也生效)
if scores["has_highlight_annot"] < 1.0:
scores["overall_score"] = min(scores["overall_score"], 0.40)
if scores["popup_text_present"] < 1.0:
scores["overall_score"] = min(scores["overall_score"], 0.40)
if scores["highlight_position_ok"] < 0.5:
scores["overall_score"] = min(scores["overall_score"], 0.50)
if scores["wrong_sentence_field"] < 1.0:
scores["overall_score"] = min(scores["overall_score"], 0.55)
if scores["proof_png"] < 1.0 or scores["proof_resolution_ok"] < 1.0:
scores["overall_score"] = min(scores["overall_score"], 0.55)
# 8. VLM HARD GATE
vlm_used = False
if vlm_score_rubric and pp.exists() and pp.stat().st_size >= 20 * 1024:
rubric = {
"vlm_pdf_view": "proof.png 是 PDF 阅读器界面 (Okular / Evince) 的截图;不是空白图、Hello World、源代码窗口。",
"vlm_yellow_highlight": "proof.png 中能看到一段文字被黄色 / 半透明色块覆盖 — 即真有高亮 annotation 视觉效果。",
"vlm_target_sentence": "proof.png 中可读出 'Mars is the largest planet' 这句话 (highlight 应该盖在这上面)。",
"vlm_popup_visible": "proof.png 中能看到 popup / sticky note 弹窗, 文字含 'factually wrong'。",
}
try:
vlm = vlm_score_rubric([str(pp)], rubric,
instruction="判断 proof.png 是否真显示了 Okular 把 'Mars is the largest planet' 这句话用黄色高亮 + popup 'factually wrong' 标注出来。")
for k in rubric: scores[k] = vlm.get(k, 0.0)
scores["judge_method"] = vlm.get("judge_method", "failed")
if scores["judge_method"] != "failed":
vlm_used = True
vlm_avg = sum(vlm.get(k, 0.0) for k in rubric) / len(rubric)
scores["overall_score"] = round(0.5*base + 0.5*vlm_avg, 3)
# HARD GATES — 阈值上拉
if scores.get("vlm_pdf_view", 0.0) < 0.7:
scores["overall_score"] = min(scores["overall_score"], 0.25)
if scores.get("vlm_target_sentence", 0.0) < 0.7:
scores["overall_score"] = min(scores["overall_score"], 0.45)
if scores.get("vlm_yellow_highlight", 0.0) < 0.7:
scores["overall_score"] = min(scores["overall_score"], 0.50)
if scores.get("vlm_popup_visible", 0.0) < 0.6:
scores["overall_score"] = min(scores["overall_score"], 0.55)
# 全部 VLM 维度都低 → 视为伪截图
if vlm_avg < 0.4:
scores["overall_score"] = min(scores["overall_score"], 0.30)
except Exception:
pass
# VLM 不可用时退化分上限封顶 0.6(不能让无 VLM 也满分)
if not vlm_used:
scores["vlm_unavailable_cap"] = 0.6
scores["overall_score"] = min(scores["overall_score"], 0.60)
return scores
```
## Workspace Path
```
workspace/DOC/task_3_okular_annotate_fact
```
## Skills
```
```
## Env
```
```
## Warmup
```bash
mkdir -p /tmp_workspace/results || true
bash /tmp_workspace/convert_to_pdf.sh || true
chown -R user:user /tmp_workspace || true
rm -f /home/user/.openclaw/agents/main/sessions/*.lock 2>/dev/null || true
openclaw config unset agents.defaults.imageModel >/dev/null 2>&1 || true
openclaw config set agents.defaults.sandbox.imageModel.primary "" >/dev/null 2>&1 || true
```
|